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Neural Computing by Philip D. Wasserman
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1Neural Networks For Computing, Snowbird, UT, 1986
By Denker, John S and Conference on Neural Networks for Computing (1986 : Snowbird, Utah)
“Neural Networks For Computing, Snowbird, UT, 1986” Metadata:
- Title: ➤ Neural Networks For Computing, Snowbird, UT, 1986
- Authors: ➤ Denker, John SConference on Neural Networks for Computing (1986 : Snowbird, Utah)
- Language: English
“Neural Networks For Computing, Snowbird, UT, 1986” Subjects and Themes:
- Subjects: ➤ Neural computers - Neural networks (Computer science)
Edition Identifiers:
- Internet Archive ID: neuralnetworksfo00denk
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The book is available for download in "texts" format, the size of the file-s is: 633.16 Mbs, the file-s for this book were downloaded 141 times, the file-s went public at Fri Jul 09 2010.
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21991-BIOPHYSICAL CHEMIST DEVELOPS THEORY OF BIOINFORMATION PROCESS, NEURAL NETWORKS & NEURAL COMPUTING ACTIVITIES (USSR)
By Central Intelligence Agency
Folder: BIOPHYSICAL CHEMIST DEVELOPS THEORY OF BIOINFORMATION PROCESS; STAR GATE was an umbrella term for the Intelligence Community effort that used remote viewers who claimed to use clairvoyance, precognition, or telepathy to acquire and describe information about targets that were blocked from ordinary perception. The records include documentation of remote viewing sessions, training, internal memoranda, foreign assessments, and program reviews. The STAR GATE program was also called SCANATE, GONDOLA WISH, DRAGOON ABSORB, GRILL FLAME, CENTER LANE, SUN STREAK. Files were released through CREST and obtained as TIF files by the Black Vault and converted to PDF by That 1 Archive.
“1991-BIOPHYSICAL CHEMIST DEVELOPS THEORY OF BIOINFORMATION PROCESS, NEURAL NETWORKS & NEURAL COMPUTING ACTIVITIES (USSR)” Metadata:
- Title: ➤ 1991-BIOPHYSICAL CHEMIST DEVELOPS THEORY OF BIOINFORMATION PROCESS, NEURAL NETWORKS & NEURAL COMPUTING ACTIVITIES (USSR)
- Author: Central Intelligence Agency
- Language: English
“1991-BIOPHYSICAL CHEMIST DEVELOPS THEORY OF BIOINFORMATION PROCESS, NEURAL NETWORKS & NEURAL COMPUTING ACTIVITIES (USSR)” Subjects and Themes:
- Subjects: ➤ CREST - CIA Records Search Tool - CIA - Central Intelligence Agency - STARGATE - SCANATE - GONDOLA WISH - DRAGOON ABSORB - GRILL FLAME - CENTER LANE - SUN STREAK - STAR GATE - Psychic - Remote viewing
Edition Identifiers:
- Internet Archive ID: CIA-RDP96-00792R000500280002-1
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3Emergent Neural Computational Architectures Based On Neuroscience : Towards Neuroscience-inspired Computing
Folder: BIOPHYSICAL CHEMIST DEVELOPS THEORY OF BIOINFORMATION PROCESS; STAR GATE was an umbrella term for the Intelligence Community effort that used remote viewers who claimed to use clairvoyance, precognition, or telepathy to acquire and describe information about targets that were blocked from ordinary perception. The records include documentation of remote viewing sessions, training, internal memoranda, foreign assessments, and program reviews. The STAR GATE program was also called SCANATE, GONDOLA WISH, DRAGOON ABSORB, GRILL FLAME, CENTER LANE, SUN STREAK. Files were released through CREST and obtained as TIF files by the Black Vault and converted to PDF by That 1 Archive.
“Emergent Neural Computational Architectures Based On Neuroscience : Towards Neuroscience-inspired Computing” Metadata:
- Title: ➤ Emergent Neural Computational Architectures Based On Neuroscience : Towards Neuroscience-inspired Computing
- Language: English
“Emergent Neural Computational Architectures Based On Neuroscience : Towards Neuroscience-inspired Computing” Subjects and Themes:
- Subjects: ➤ Computer architecture - Neural computers - Neural networks (Computer science)
Edition Identifiers:
- Internet Archive ID: emergentneuralco0000unse
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The book is available for download in "texts" format, the size of the file-s is: 1361.16 Mbs, the file-s for this book were downloaded 20 times, the file-s went public at Sat May 28 2022.
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4DTIC ADA238786: Computing With Neural Maps: Application To Perceptual And Cognitive Functions
By Defense Technical Information Center
During the past year these investigators: (1) Illustrated application of computer science to neuroscience at three levels: measuring, modeling, and understanding the computational function of the columnar pattern of ocular dominance in primate visual cortex; (2) Demonstrated an algorithm for modeling polymap architectures of the cerebral neocortex, where the term 'polymap' emphasizes the joint occurrence of topographic mapping of multiple sub- modalities, interlaced in the form of macroscopic patches ('columns') into a single cortical lamina; (3) Considered a space-variant sensor design based on the conformal mapping of the halp disk, w=log (z+a), a 0, which characterizes the anatomical structure of the primate and human visual systems. (4) Showed that the best algorithm for fusing multiple space-variant fixations of the same scene show, under certain assumptions of pixel distribution, is indeed optimal in a least-squared-error sense; (5) Analyzed the characteristics of a synthetic sensor comparable, with respect to field width and resolution, to the primate visual system; (6) Showed a quantitative measurement of the macaque ocular dominance column pattern, based on measurement of local power spectral densities of a computer reconstruction and numerical flattening of VI.
“DTIC ADA238786: Computing With Neural Maps: Application To Perceptual And Cognitive Functions” Metadata:
- Title: ➤ DTIC ADA238786: Computing With Neural Maps: Application To Perceptual And Cognitive Functions
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA238786: Computing With Neural Maps: Application To Perceptual And Cognitive Functions” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Schwartz, Eric L - NEW YORK UNIV MEDICAL CENTER NY DEPT OF PSYCHIATRY - *ALGORITHMS - MEASUREMENT - COMPUTATIONS - DETECTORS - HUMANS - COMPUTERS - COGNITION - POWER SPECTRA - PATTERNS - NERVOUS SYSTEM - MAPS - WIDTH - MAPPING - VISION - EYE - SPECTRAL ENERGY DISTRIBUTION - ANATOMY - PRIMATES - TOPOGRAPHIC MAPS - VISUAL CORTEX - CONFORMAL MAPPING - FUNCTIONS
Edition Identifiers:
- Internet Archive ID: DTIC_ADA238786
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The book is available for download in "texts" format, the size of the file-s is: 6.30 Mbs, the file-s for this book were downloaded 65 times, the file-s went public at Sat Mar 03 2018.
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5DTIC ADA221505: European Seminar On Neural Computing
By Defense Technical Information Center
The presentations given at this seminar, held in February 1988 in London, UK are reviewed in depth. Topics range from neural systems and models through languages and architectures to the respective European and American perspectives on neurocomputing. Contents: Introduction; Neural Systems and Models; Connectionist Models: Background and Emergent Properties; Historical Perspective; Programing Languages for Neurocomputers; Associative Memories and Representations of Knowledge as Internal States in Distributed Systems; Parallel Architecture for Neurocomputers; Combinatorial Optimization on a Boltzmann Machine; Neural Networks: A European Perspective; Neurocomputing Applications: A United States Perspective.
“DTIC ADA221505: European Seminar On Neural Computing” Metadata:
- Title: ➤ DTIC ADA221505: European Seminar On Neural Computing
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA221505: European Seminar On Neural Computing” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Zomzely-Neurath, Claire - OFFICE OF NAVAL RESEARCH EUROPEAN OFFICE FPO NEW YORK 09510 - *COMPUTATIONS - *NEURAL NETS - SYMPOSIA - PARALLEL ORIENTATION - OPTIMIZATION - ARCHITECTURE - EUROPE - NERVOUS SYSTEM - COMBINATORIAL ANALYSIS - UNITED STATES - DISTRIBUTION
Edition Identifiers:
- Internet Archive ID: DTIC_ADA221505
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The book is available for download in "texts" format, the size of the file-s is: 53.30 Mbs, the file-s for this book were downloaded 49 times, the file-s went public at Sun Feb 25 2018.
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6Neural Network Models For Optical Computing : 13-14 January 1988, Los Angeles, California
The presentations given at this seminar, held in February 1988 in London, UK are reviewed in depth. Topics range from neural systems and models through languages and architectures to the respective European and American perspectives on neurocomputing. Contents: Introduction; Neural Systems and Models; Connectionist Models: Background and Emergent Properties; Historical Perspective; Programing Languages for Neurocomputers; Associative Memories and Representations of Knowledge as Internal States in Distributed Systems; Parallel Architecture for Neurocomputers; Combinatorial Optimization on a Boltzmann Machine; Neural Networks: A European Perspective; Neurocomputing Applications: A United States Perspective.
“Neural Network Models For Optical Computing : 13-14 January 1988, Los Angeles, California” Metadata:
- Title: ➤ Neural Network Models For Optical Computing : 13-14 January 1988, Los Angeles, California
- Language: English
“Neural Network Models For Optical Computing : 13-14 January 1988, Los Angeles, California” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: isbn_0892529172_882
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The book is available for download in "texts" format, the size of the file-s is: 515.24 Mbs, the file-s for this book were downloaded 12 times, the file-s went public at Thu Jul 27 2023.
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7Neural Computing
By Philip D. Wasserman
The presentations given at this seminar, held in February 1988 in London, UK are reviewed in depth. Topics range from neural systems and models through languages and architectures to the respective European and American perspectives on neurocomputing. Contents: Introduction; Neural Systems and Models; Connectionist Models: Background and Emergent Properties; Historical Perspective; Programing Languages for Neurocomputers; Associative Memories and Representations of Knowledge as Internal States in Distributed Systems; Parallel Architecture for Neurocomputers; Combinatorial Optimization on a Boltzmann Machine; Neural Networks: A European Perspective; Neurocomputing Applications: A United States Perspective.
“Neural Computing” Metadata:
- Title: Neural Computing
- Author: Philip D. Wasserman
- Language: English
Edition Identifiers:
- Internet Archive ID: neuralcomputingt00wass
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8DTIC ADA203078: Theoretical Investigation Of Optical Computing Based On Neural Network Models
By Defense Technical Information Center
The optical implementation of weighted interconnections is investigated and basic relationship are derived between the number of neurons, the number of connections and methods for selecting the positions of the neurons to achieve the maximum density of independent connections are presented. The connectivity of a neural network (number of synapses per neuron) is related to the complexity of the problems it can handle. For a network that learns a problem from examples using a local learning rule, it is proved that the entropy of the problem becomes a lower bound for the connectivity of the network.
“DTIC ADA203078: Theoretical Investigation Of Optical Computing Based On Neural Network Models” Metadata:
- Title: ➤ DTIC ADA203078: Theoretical Investigation Of Optical Computing Based On Neural Network Models
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA203078: Theoretical Investigation Of Optical Computing Based On Neural Network Models” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Psaltis, Demetri - CALIFORNIA INST OF TECH PASADENA DEPT OF ELECTRICAL ENGINEERING - *OPTICAL CIRCUITS - *NEURAL NETS - MODELS - THEORY - ENTROPY - CIRCUIT INTERCONNECTIONS - NERVE CELLS - SYNAPSE - OPTICAL PROCESSING - COMPUTATIONS - DENSITY - WEIGHTING FUNCTIONS
Edition Identifiers:
- Internet Archive ID: DTIC_ADA203078
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9DTIC ADA252442: Data To Test And Evaluate The Performance Of Neural Network Architectures For Seismic Signal Discrimination. Volume 2. Neural Computing For Seismic Phase Identification
By Defense Technical Information Center
This report describes the application of a neural computing approach for automated initial identification of seismic phases (P or S) recorded by 3- component stations. We use a 3-layer back-propagation neural network to identify phases on the basis of their polarization attributes. This approach is much easier to develop than a more traditional rule-based system because of the high-dimensionality of the input (8-10 polarization attributes), and because the data are station-dependent. The neural network approach also performs 3-7% better than a linear multivariate method. Most of the gain is for signals with low signal-to-noise ratio since the non-linear neural network classifier is less sensitive to outliers (or noisy data) than the linear multivariate method. Another advantage of the neural network approach is that it is easily adapted to data recorded by new stations. For example, we find that we achieve 75-80% identification accuracy for a new station without system retraining (e.g., using a network derived from data from a different station). The data required for retraining can be accumulated in about two weeks of continuous operation of the new station, and training takes less than one hour on a Sun4 Sparc station. After this retraining, the identification accuracy increases to 90%. We have recently added context (e.g., the number of arrivals before and after the arrival under consideration) to the input of the neural network, and we have found that this further improves the identification accuracy by 3-5%. This neural network approach performs better than competing technologies for automated initial phase identification, and it is amenable to machine-learning techniques to automate the process of acquiring new knowledge.
“DTIC ADA252442: Data To Test And Evaluate The Performance Of Neural Network Architectures For Seismic Signal Discrimination. Volume 2. Neural Computing For Seismic Phase Identification” Metadata:
- Title: ➤ DTIC ADA252442: Data To Test And Evaluate The Performance Of Neural Network Architectures For Seismic Signal Discrimination. Volume 2. Neural Computing For Seismic Phase Identification
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA252442: Data To Test And Evaluate The Performance Of Neural Network Architectures For Seismic Signal Discrimination. Volume 2. Neural Computing For Seismic Phase Identification” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Patnaik, Gagan B - SCIENCE APPLICATIONS INTERNATIONAL CORP SAN DIEGO CA - *COMPUTER ARCHITECTURE - *SEISMIC ARRAYS - *NEURAL NETS - *COMPUTER NETWORKS - POLARIZATION - TRAINING - NETWORKS - LAYERS - SIGNAL TO NOISE RATIO - ACCURACY - RULE BASED SYSTEMS - PHASE - IDENTIFICATION - SIGNALS - GAIN - OPERATION - MACHINES - NOISE - NUMBERS - ARRIVAL - LEARNING - SEISMOLOGY - APPROACH - RATIOS - PROPAGATION - RETRAINING - INPUT - STATIONS
Edition Identifiers:
- Internet Archive ID: DTIC_ADA252442
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10Granular Computing Neural-fuzzy Modelling: A Neutrosophic Approach
Granular computing is a computational paradigm that mimics human cognition in terms of grouping similar information together. Compatibility operators such as cardinality, orientation, density, and multidimensional length act on both in raw data and information granules which are formed from raw data providing a framework for human-like information processing where information granulation is intrinsic.
“Granular Computing Neural-fuzzy Modelling: A Neutrosophic Approach” Metadata:
- Title: ➤ Granular Computing Neural-fuzzy Modelling: A Neutrosophic Approach
“Granular Computing Neural-fuzzy Modelling: A Neutrosophic Approach” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: NeutroGranularComputingNeural
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11Advanced Methods In Neural Computing
By Wasserman, Philip D., 1937-
Granular computing is a computational paradigm that mimics human cognition in terms of grouping similar information together. Compatibility operators such as cardinality, orientation, density, and multidimensional length act on both in raw data and information granules which are formed from raw data providing a framework for human-like information processing where information granulation is intrinsic.
“Advanced Methods In Neural Computing” Metadata:
- Title: ➤ Advanced Methods In Neural Computing
- Author: Wasserman, Philip D., 1937-
- Language: English
Edition Identifiers:
- Internet Archive ID: advancedmethodsi0000wass
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120089 Pdf A Guide To Neural Computing Applications
Granular computing is a computational paradigm that mimics human cognition in terms of grouping similar information together. Compatibility operators such as cardinality, orientation, density, and multidimensional length act on both in raw data and information granules which are formed from raw data providing a framework for human-like information processing where information granulation is intrinsic.
“0089 Pdf A Guide To Neural Computing Applications” Metadata:
- Title: ➤ 0089 Pdf A Guide To Neural Computing Applications
Edition Identifiers:
- Internet Archive ID: ➤ 0089-pdf-a-guide-to-neural-computing-applications
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13Hardware-Driven Nonlinear Activation For Stochastic Computing Based Deep Convolutional Neural Networks
By Ji Li, Zihao Yuan, Zhe Li, Caiwen Ding, Ao Ren, Qinru Qiu, Jeffrey Draper and Yanzhi Wang
Recently, Deep Convolutional Neural Networks (DCNNs) have made unprecedented progress, achieving the accuracy close to, or even better than human-level perception in various tasks. There is a timely need to map the latest software DCNNs to application-specific hardware, in order to achieve orders of magnitude improvement in performance, energy efficiency and compactness. Stochastic Computing (SC), as a low-cost alternative to the conventional binary computing paradigm, has the potential to enable massively parallel and highly scalable hardware implementation of DCNNs. One major challenge in SC based DCNNs is designing accurate nonlinear activation functions, which have a significant impact on the network-level accuracy but cannot be implemented accurately by existing SC computing blocks. In this paper, we design and optimize SC based neurons, and we propose highly accurate activation designs for the three most frequently used activation functions in software DCNNs, i.e, hyperbolic tangent, logistic, and rectified linear units. Experimental results on LeNet-5 using MNIST dataset demonstrate that compared with a binary ASIC hardware DCNN, the DCNN with the proposed SC neurons can achieve up to 61X, 151X, and 2X improvement in terms of area, power, and energy, respectively, at the cost of small precision degradation.In addition, the SC approach achieves up to 21X and 41X of the area, 41X and 72X of the power, and 198200X and 96443X of the energy, compared with CPU and GPU approaches, respectively, while the error is increased by less than 3.07%. ReLU activation is suggested for future SC based DCNNs considering its superior performance under a small bit stream length.
“Hardware-Driven Nonlinear Activation For Stochastic Computing Based Deep Convolutional Neural Networks” Metadata:
- Title: ➤ Hardware-Driven Nonlinear Activation For Stochastic Computing Based Deep Convolutional Neural Networks
- Authors: ➤ Ji LiZihao YuanZhe LiCaiwen DingAo RenQinru QiuJeffrey DraperYanzhi Wang
“Hardware-Driven Nonlinear Activation For Stochastic Computing Based Deep Convolutional Neural Networks” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: arxiv-1703.04135
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14Fault Tolerance In Distributed Neural Computing
By Anton Kulakov, Mark Zwolinski and Jeff Reeve
With the increasing complexity of computing systems, complete hardware reliability can no longer be guaranteed. We need, however, to ensure overall system reliability. One of the most important features of artificial neural networks is their intrinsic fault-tolerance. The aim of this work is to investigate whether such networks have features that can be applied to wider computational systems. This paper presents an analysis, in both the learning and operational phases, of a distributed feed-forward neural network with decentralised event-driven time management, which is insensitive to intermittent faults caused by unreliable communication or faulty hardware components. The learning rules used in the model are local in space and time, which allows efficient scalable distributed implementation. We investigate the overhead caused by injected faults and analyse the sensitivity to limited failures in the computational hardware in different areas of the network.
“Fault Tolerance In Distributed Neural Computing” Metadata:
- Title: ➤ Fault Tolerance In Distributed Neural Computing
- Authors: Anton KulakovMark ZwolinskiJeff Reeve
“Fault Tolerance In Distributed Neural Computing” Subjects and Themes:
- Subjects: ➤ Neural and Evolutionary Computing - Computing Research Repository - Distributed, Parallel, and Cluster Computing
Edition Identifiers:
- Internet Archive ID: arxiv-1509.09199
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15DTIC ADA260526: Neural Net Architecture For Computing Structure From Motion
By Defense Technical Information Center
Analysis of motion contributes to the image understanding tasks by disambiguating scene information whenever, the observer and/or objects in the scene are in motion. This proposal is focused on research and development of algorithms for automatic recalibration from sensory to egocentric coordinates during egomotion.
“DTIC ADA260526: Neural Net Architecture For Computing Structure From Motion” Metadata:
- Title: ➤ DTIC ADA260526: Neural Net Architecture For Computing Structure From Motion
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA260526: Neural Net Architecture For Computing Structure From Motion” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Skrzypek, Josef - CALIFORNIA UNIV LOS ANGELES DEPT OF COMPUTER SCIENCE - *IMAGE PROCESSING - *NEURAL NETS - *COMPUTER ARCHITECTURE - ALGORITHMS - ARTIFICIAL INTELLIGENCE - COMPUTER VISION - COORDINATES - DETECTORS - MOTION
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- Internet Archive ID: DTIC_ADA260526
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16Handbook Of Neural Computing Applications
By Maren, Alianna J
Analysis of motion contributes to the image understanding tasks by disambiguating scene information whenever, the observer and/or objects in the scene are in motion. This proposal is focused on research and development of algorithms for automatic recalibration from sensory to egocentric coordinates during egomotion.
“Handbook Of Neural Computing Applications” Metadata:
- Title: ➤ Handbook Of Neural Computing Applications
- Author: Maren, Alianna J
- Language: English
“Handbook Of Neural Computing Applications” Subjects and Themes:
- Subjects: ➤ Neural computers - Models, Neurological - Neurophysiology - Ordinateurs neuronaux - Neuronales Netz - Parallelverarbeitung - Neurocomputer - Réseaux neuronaux (informatique) - Computers Networks
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- Internet Archive ID: handbookofneural0000mare
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17Characterizing Self-Developing Biological Neural Networks: A First Step Towards Their Application To Computing Systems
By Hugues Berry and Olivier Temam
Carbon nanotubes are often seen as the only alternative technology to silicon transistors. While they are the most likely short-term one, other longer-term alternatives should be studied as well. While contemplating biological neurons as an alternative component may seem preposterous at first sight, significant recent progress in CMOS-neuron interface suggests this direction may not be unrealistic; moreover, biological neurons are known to self-assemble into very large networks capable of complex information processing tasks, something that has yet to be achieved with other emerging technologies. The first step to designing computing systems on top of biological neurons is to build an abstract model of self-assembled biological neural networks, much like computer architects manipulate abstract models of transistors and circuits. In this article, we propose a first model of the structure of biological neural networks. We provide empirical evidence that this model matches the biological neural networks found in living organisms, and exhibits the small-world graph structure properties commonly found in many large and self-organized systems, including biological neural networks. More importantly, we extract the simple local rules and characteristics governing the growth of such networks, enabling the development of potentially large but realistic biological neural networks, as would be needed for complex information processing/computing tasks. Based on this model, future work will be targeted to understanding the evolution and learning properties of such networks, and how they can be used to build computing systems.
“Characterizing Self-Developing Biological Neural Networks: A First Step Towards Their Application To Computing Systems” Metadata:
- Title: ➤ Characterizing Self-Developing Biological Neural Networks: A First Step Towards Their Application To Computing Systems
- Authors: Hugues BerryOlivier Temam
- Language: English
Edition Identifiers:
- Internet Archive ID: arxiv-q-bio0505021
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18DTIC ADA189981: Instrumentation For Scientific Computing In Neural Networks, Information Science, Artificial Intelligence, And Applied Mathematics.
By Defense Technical Information Center
This was an instrumentation grant to purchase equipment of support of research in neural networks, information science, artificial intelligence, and applied mathematics. Computer lab equipment, motor control and robotics lab equipment, speech analysis equipment and computational vision equipment were purchased.
“DTIC ADA189981: Instrumentation For Scientific Computing In Neural Networks, Information Science, Artificial Intelligence, And Applied Mathematics.” Metadata:
- Title: ➤ DTIC ADA189981: Instrumentation For Scientific Computing In Neural Networks, Information Science, Artificial Intelligence, And Applied Mathematics.
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA189981: Instrumentation For Scientific Computing In Neural Networks, Information Science, Artificial Intelligence, And Applied Mathematics.” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Grossberg, Stephen - BOSTON UNIV MA CENTER FOR ADAPTIVE SYSTEMS - *LABORATORY EQUIPMENT - *ARTIFICIAL INTELLIGENCE - APPLIED MATHEMATICS - COMPUTATIONS - VISION - INFORMATION SCIENCES - NEURAL NETS - ROBOTICS - CONTROL - MOTORS - PROCUREMENT - SPEECH ANALYSIS - COMPUTERS - WAVEFORMS
Edition Identifiers:
- Internet Archive ID: DTIC_ADA189981
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19Learning And Soft Computing : Support Vector Machines, Neural Networks, And Fuzzy Logic Models
By Kecman, V. (Vojislav), 1948-
This was an instrumentation grant to purchase equipment of support of research in neural networks, information science, artificial intelligence, and applied mathematics. Computer lab equipment, motor control and robotics lab equipment, speech analysis equipment and computational vision equipment were purchased.
“Learning And Soft Computing : Support Vector Machines, Neural Networks, And Fuzzy Logic Models” Metadata:
- Title: ➤ Learning And Soft Computing : Support Vector Machines, Neural Networks, And Fuzzy Logic Models
- Author: Kecman, V. (Vojislav), 1948-
- Language: English
“Learning And Soft Computing : Support Vector Machines, Neural Networks, And Fuzzy Logic Models” Subjects and Themes:
- Subjects: Soft computing - Support vector machines
Edition Identifiers:
- Internet Archive ID: learningsoftcomp0000kecm
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20DTIC ADA191668: Theoretical Investigation Of Optical Computing Based On Neural Network Models.
By Defense Technical Information Center
It is difficult to find good mathematical models for many natural problems such as pattern recognition. Not only does this difficulty preclude finding good solutions for these problems, but it also precludes estimating their complexity using the standard tools of the theory oc computational complexity (Traub, 1985). Part of the difficulty can be traced to symptoms such as ill-definition, fuzziness, and inexactness. However, the difficulty of modeling these problems may be inherent in some cases. Keywords: Photorefractive crystals; Adaptive optical networks; Connectivity; Entropy; Holograms.
“DTIC ADA191668: Theoretical Investigation Of Optical Computing Based On Neural Network Models.” Metadata:
- Title: ➤ DTIC ADA191668: Theoretical Investigation Of Optical Computing Based On Neural Network Models.
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA191668: Theoretical Investigation Of Optical Computing Based On Neural Network Models.” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Abu-Mostafa, Yaser - CALIFORNIA INST OF TECH PASADENA DEPT OF ELECTRICAL ENGINEERING - *HOLOGRAMS - *OPTICAL PROPERTIES - *PATTERN RECOGNITION - ADAPTIVE SYSTEMS - COMPUTATIONS - MATHEMATICAL MODELS - NETWORKS - NEURAL NETS - OPTICAL PROCESSING - THEORY - BOOLEAN ALGEBRA - ENTROPY
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- Internet Archive ID: DTIC_ADA191668
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21Neural Network Model Development With Soft Computing Techniques For Membrane Filtration Process
By International Journal of Electrical and Computer Engineering (IJECE)
Membrane bioreactor employs an efficient filtration technology for solid and liquid separation in wastewater treatment process. Development of membrane filtration model is significant as this model can be used to predict filtration dynamic which is later utilized in control development. Most of the available models only suitable for monitoring purpose, which are too complex, required many variables and not suitable for control system design. This work focusing on the simple time seris model for membrane filtration process using neural network technique. In this paper, submerged membrane filtration model developed using recurrent neural network (RNN) train using genetic algorithm (GA), inertia weight particle swarm optimization (IW-PSO) and gravitational search algorithm (GSA). These optimization algorithms are compared in term of its accuracy and convergent speed in updating the weights and biases of the RNN for optimal filtration model. The evaluation of the models is measured using three performance evaluations, which are mean square error (MSE), mean absolute deviation (MAD) and coefficient of determination (R2). From the results obtained, all methods yield satisfactory result for the model, with the best results given by IW-PSO.
“Neural Network Model Development With Soft Computing Techniques For Membrane Filtration Process” Metadata:
- Title: ➤ Neural Network Model Development With Soft Computing Techniques For Membrane Filtration Process
- Author: ➤ International Journal of Electrical and Computer Engineering (IJECE)
“Neural Network Model Development With Soft Computing Techniques For Membrane Filtration Process” Subjects and Themes:
- Subjects: ANN modeling - GA - GSA - PSO - SMBR
Edition Identifiers:
- Internet Archive ID: 10.11591ijece.v8i4.pp2614-2623
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22Energy Efficient Cloud Computing Using Artificial Neural Networks
By Haneen Saeed Al-Mudhafar, Abdullahi Abdu Ibrahim
This effort focuses on building an intelligent, energy-efficient cloud architecture to improve cloud computing infrastructures. The rate at which cloud data gets modernized has increased, leading to more reviews comparing the various modernization methodologies and models. Several wealthy nations, including Turkey, have upgraded to more complicated and energy-efficient cloud infrastructure. We designed a Python application that uses an AI framework to maximize cloud computing's usage of computing resources and clean, renewable energy. This plan outlines concepts for a future neural network-trained digital ecosystem (ANN). The ANN model details energy forecasting tasks within a constrained system. Prominent corporations use AI to design policies to secure their cloud infrastructures and digital assets. Cloud computing systems were modernized by acquiring, normalizing, and transforming their file formats. Most cloud-based infrastructures were updated successfully. This was expected, given digital implementations dominate these systems. We'll investigate the energy consumption of AWS, AZURE, GCP, and Digital Ocean. Since most files were still on paper in 2015, the number of upgrades was modest. By 2020, a large part of cloud computing systems will be converted to digital format, with 98.68% accuracy for all cloud computing systems when trained on 80% of the data and evaluated on 20% of the data. Smart energy-efficient cloud solutions are replacing traditional data centers year by year. Smart energy-efficient cloud systems help preserve cloud computing systems and understand how cloud platforms are modernized and perform in energy prediction.
“Energy Efficient Cloud Computing Using Artificial Neural Networks” Metadata:
- Title: ➤ Energy Efficient Cloud Computing Using Artificial Neural Networks
- Author: ➤ Haneen Saeed Al-Mudhafar, Abdullahi Abdu Ibrahim
- Language: English
“Energy Efficient Cloud Computing Using Artificial Neural Networks” Subjects and Themes:
- Subjects: Energy Efficient - modernization - artificial intelligence - cloud computing - machine learning
Edition Identifiers:
- Internet Archive ID: ➤ httpsjournals.researchparks.orgindex.phpijhcsarticleview5049
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23Neural Network Parallel Computing
By Takefuji, Yoshiyasu, 1955-
This effort focuses on building an intelligent, energy-efficient cloud architecture to improve cloud computing infrastructures. The rate at which cloud data gets modernized has increased, leading to more reviews comparing the various modernization methodologies and models. Several wealthy nations, including Turkey, have upgraded to more complicated and energy-efficient cloud infrastructure. We designed a Python application that uses an AI framework to maximize cloud computing's usage of computing resources and clean, renewable energy. This plan outlines concepts for a future neural network-trained digital ecosystem (ANN). The ANN model details energy forecasting tasks within a constrained system. Prominent corporations use AI to design policies to secure their cloud infrastructures and digital assets. Cloud computing systems were modernized by acquiring, normalizing, and transforming their file formats. Most cloud-based infrastructures were updated successfully. This was expected, given digital implementations dominate these systems. We'll investigate the energy consumption of AWS, AZURE, GCP, and Digital Ocean. Since most files were still on paper in 2015, the number of upgrades was modest. By 2020, a large part of cloud computing systems will be converted to digital format, with 98.68% accuracy for all cloud computing systems when trained on 80% of the data and evaluated on 20% of the data. Smart energy-efficient cloud solutions are replacing traditional data centers year by year. Smart energy-efficient cloud systems help preserve cloud computing systems and understand how cloud platforms are modernized and perform in energy prediction.
“Neural Network Parallel Computing” Metadata:
- Title: ➤ Neural Network Parallel Computing
- Author: Takefuji, Yoshiyasu, 1955-
- Language: English
“Neural Network Parallel Computing” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: neuralnetworkpar0000take
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24Optical Computing And Neural Networks : 16-17 December 1992, National Chiao Tung University, Hsinchu, Taiwan China
This effort focuses on building an intelligent, energy-efficient cloud architecture to improve cloud computing infrastructures. The rate at which cloud data gets modernized has increased, leading to more reviews comparing the various modernization methodologies and models. Several wealthy nations, including Turkey, have upgraded to more complicated and energy-efficient cloud infrastructure. We designed a Python application that uses an AI framework to maximize cloud computing's usage of computing resources and clean, renewable energy. This plan outlines concepts for a future neural network-trained digital ecosystem (ANN). The ANN model details energy forecasting tasks within a constrained system. Prominent corporations use AI to design policies to secure their cloud infrastructures and digital assets. Cloud computing systems were modernized by acquiring, normalizing, and transforming their file formats. Most cloud-based infrastructures were updated successfully. This was expected, given digital implementations dominate these systems. We'll investigate the energy consumption of AWS, AZURE, GCP, and Digital Ocean. Since most files were still on paper in 2015, the number of upgrades was modest. By 2020, a large part of cloud computing systems will be converted to digital format, with 98.68% accuracy for all cloud computing systems when trained on 80% of the data and evaluated on 20% of the data. Smart energy-efficient cloud solutions are replacing traditional data centers year by year. Smart energy-efficient cloud systems help preserve cloud computing systems and understand how cloud platforms are modernized and perform in energy prediction.
“Optical Computing And Neural Networks : 16-17 December 1992, National Chiao Tung University, Hsinchu, Taiwan China” Metadata:
- Title: ➤ Optical Computing And Neural Networks : 16-17 December 1992, National Chiao Tung University, Hsinchu, Taiwan China
- Language: English
“Optical Computing And Neural Networks : 16-17 December 1992, National Chiao Tung University, Hsinchu, Taiwan China” Subjects and Themes:
- Subjects: ➤ Optical data processing -- Congresses - Neural networks (Computer science) -- Congresses
Edition Identifiers:
- Internet Archive ID: isbn_0819410128_1812
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25Emergent Neural Computational Architectures Based On Neuroscience : Towards Neuroscience-inspired Computing
By Wermter, Stefan, Austin, James, 1959- and Willshaw, David J
This effort focuses on building an intelligent, energy-efficient cloud architecture to improve cloud computing infrastructures. The rate at which cloud data gets modernized has increased, leading to more reviews comparing the various modernization methodologies and models. Several wealthy nations, including Turkey, have upgraded to more complicated and energy-efficient cloud infrastructure. We designed a Python application that uses an AI framework to maximize cloud computing's usage of computing resources and clean, renewable energy. This plan outlines concepts for a future neural network-trained digital ecosystem (ANN). The ANN model details energy forecasting tasks within a constrained system. Prominent corporations use AI to design policies to secure their cloud infrastructures and digital assets. Cloud computing systems were modernized by acquiring, normalizing, and transforming their file formats. Most cloud-based infrastructures were updated successfully. This was expected, given digital implementations dominate these systems. We'll investigate the energy consumption of AWS, AZURE, GCP, and Digital Ocean. Since most files were still on paper in 2015, the number of upgrades was modest. By 2020, a large part of cloud computing systems will be converted to digital format, with 98.68% accuracy for all cloud computing systems when trained on 80% of the data and evaluated on 20% of the data. Smart energy-efficient cloud solutions are replacing traditional data centers year by year. Smart energy-efficient cloud systems help preserve cloud computing systems and understand how cloud platforms are modernized and perform in energy prediction.
“Emergent Neural Computational Architectures Based On Neuroscience : Towards Neuroscience-inspired Computing” Metadata:
- Title: ➤ Emergent Neural Computational Architectures Based On Neuroscience : Towards Neuroscience-inspired Computing
- Authors: Wermter, StefanAustin, James, 1959-Willshaw, David J
- Language: English
“Emergent Neural Computational Architectures Based On Neuroscience : Towards Neuroscience-inspired Computing” Subjects and Themes:
- Subjects: ➤ Computer architecture - Neural computers - Neural networks (Computer science)
Edition Identifiers:
- Internet Archive ID: springer_10.1007-3-540-44597-8
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26ASP Vision: Optically Computing The First Layer Of Convolutional Neural Networks Using Angle Sensitive Pixels
By Huaijin Chen, Suren Jayasuriya, Jiyue Yang, Judy Stephen, Sriram Sivaramakrishnan, Ashok Veeraraghavan and Alyosha Molnar
Deep learning using convolutional neural networks (CNNs) is quickly becoming the state-of-the-art for challenging computer vision applications. However, deep learning's power consumption and bandwidth requirements currently limit its application in embedded and mobile systems with tight energy budgets. In this paper, we explore the energy savings of optically computing the first layer of CNNs. To do so, we utilize bio-inspired Angle Sensitive Pixels (ASPs), custom CMOS diffractive image sensors which act similar to Gabor filter banks in the V1 layer of the human visual cortex. ASPs replace both image sensing and the first layer of a conventional CNN by directly performing optical edge filtering, saving sensing energy, data bandwidth, and CNN FLOPS to compute. Our experimental results (both on synthetic data and a hardware prototype) for a variety of vision tasks such as digit recognition, object recognition, and face identification demonstrate using ASPs while achieving similar performance compared to traditional deep learning pipelines.
“ASP Vision: Optically Computing The First Layer Of Convolutional Neural Networks Using Angle Sensitive Pixels” Metadata:
- Title: ➤ ASP Vision: Optically Computing The First Layer Of Convolutional Neural Networks Using Angle Sensitive Pixels
- Authors: ➤ Huaijin ChenSuren JayasuriyaJiyue YangJudy StephenSriram SivaramakrishnanAshok VeeraraghavanAlyosha Molnar
“ASP Vision: Optically Computing The First Layer Of Convolutional Neural Networks Using Angle Sensitive Pixels” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: arxiv-1605.03621
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27SC-DCNN: Highly-Scalable Deep Convolutional Neural Network Using Stochastic Computing
By Ao Ren, Ji Li, Zhe Li, Caiwen Ding, Xuehai Qian, Qinru Qiu, Bo Yuan and Yanzhi Wang
With recent advancing of Internet of Things (IoTs), it becomes very attractive to implement the deep convolutional neural networks (DCNNs) onto embedded/portable systems. Presently, executing the software-based DCNNs requires high-performance server clusters in practice, restricting their widespread deployment on the mobile devices. To overcome this issue, considerable research efforts have been conducted in the context of developing highly-parallel and specific DCNN hardware, utilizing GPGPUs, FPGAs, and ASICs. Stochastic Computing (SC), which uses bit-stream to represent a number within [-1, 1] by counting the number of ones in the bit-stream, has a high potential for implementing DCNNs with high scalability and ultra-low hardware footprint. Since multiplications and additions can be calculated using AND gates and multiplexers in SC, significant reductions in power/energy and hardware footprint can be achieved compared to the conventional binary arithmetic implementations. The tremendous savings in power (energy) and hardware resources bring about immense design space for enhancing scalability and robustness for hardware DCNNs. This paper presents the first comprehensive design and optimization framework of SC-based DCNNs (SC-DCNNs). We first present the optimal designs of function blocks that perform the basic operations, i.e., inner product, pooling, and activation function. Then we propose the optimal design of four types of combinations of basic function blocks, named feature extraction blocks, which are in charge of extracting features from input feature maps. Besides, weight storage methods are investigated to reduce the area and power/energy consumption for storing weights. Finally, the whole SC-DCNN implementation is optimized, with feature extraction blocks carefully selected, to minimize area and power/energy consumption while maintaining a high network accuracy level.
“SC-DCNN: Highly-Scalable Deep Convolutional Neural Network Using Stochastic Computing” Metadata:
- Title: ➤ SC-DCNN: Highly-Scalable Deep Convolutional Neural Network Using Stochastic Computing
- Authors: ➤ Ao RenJi LiZhe LiCaiwen DingXuehai QianQinru QiuBo YuanYanzhi Wang
“SC-DCNN: Highly-Scalable Deep Convolutional Neural Network Using Stochastic Computing” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: arxiv-1611.05939
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28Neural Computing Architectures : The Design Of Brain-like Machines
With recent advancing of Internet of Things (IoTs), it becomes very attractive to implement the deep convolutional neural networks (DCNNs) onto embedded/portable systems. Presently, executing the software-based DCNNs requires high-performance server clusters in practice, restricting their widespread deployment on the mobile devices. To overcome this issue, considerable research efforts have been conducted in the context of developing highly-parallel and specific DCNN hardware, utilizing GPGPUs, FPGAs, and ASICs. Stochastic Computing (SC), which uses bit-stream to represent a number within [-1, 1] by counting the number of ones in the bit-stream, has a high potential for implementing DCNNs with high scalability and ultra-low hardware footprint. Since multiplications and additions can be calculated using AND gates and multiplexers in SC, significant reductions in power/energy and hardware footprint can be achieved compared to the conventional binary arithmetic implementations. The tremendous savings in power (energy) and hardware resources bring about immense design space for enhancing scalability and robustness for hardware DCNNs. This paper presents the first comprehensive design and optimization framework of SC-based DCNNs (SC-DCNNs). We first present the optimal designs of function blocks that perform the basic operations, i.e., inner product, pooling, and activation function. Then we propose the optimal design of four types of combinations of basic function blocks, named feature extraction blocks, which are in charge of extracting features from input feature maps. Besides, weight storage methods are investigated to reduce the area and power/energy consumption for storing weights. Finally, the whole SC-DCNN implementation is optimized, with feature extraction blocks carefully selected, to minimize area and power/energy consumption while maintaining a high network accuracy level.
“Neural Computing Architectures : The Design Of Brain-like Machines” Metadata:
- Title: ➤ Neural Computing Architectures : The Design Of Brain-like Machines
- Language: English
“Neural Computing Architectures : The Design Of Brain-like Machines” Subjects and Themes:
- Subjects: Neural computers - Computer architecture
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- Internet Archive ID: neuralcomputinga0000unse
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29DTIC ADA318037: Neural Network Computing Architectures Of Coupled Associative Memories With Dynamic Attractors.
By Defense Technical Information Center
In this time period, previous work on the construction of an oscillating neural network 'computer' that could recognize sequences of characters of a grammar was extended to employ selective 'attentional' control of synchronization to direct the flow of communication and computation within the architecture. This selective control of synchronization was used to solve a more difficult grammatical inference problem than we had previously attempted. Further performance improvement was demonstrated by the use of a temporal context hierarchy in the hidden and context units of the architecture. These form a temporal counting hierarchy which allows representations of the input variations to form at different temporal scales for learning sequences with with long temporal dependencies. We further explored the analog system identification capabilities of these systems where the output modules take on analog values. We were able to learn a mapping from the acoustic cepstral values of speech to articulatory parameters such as jaw and lip movement. This is a model speech processing problem which allows us to test the usefulness of our systems for speech recognition preprocessing.
“DTIC ADA318037: Neural Network Computing Architectures Of Coupled Associative Memories With Dynamic Attractors.” Metadata:
- Title: ➤ DTIC ADA318037: Neural Network Computing Architectures Of Coupled Associative Memories With Dynamic Attractors.
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA318037: Neural Network Computing Architectures Of Coupled Associative Memories With Dynamic Attractors.” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Hirsch, Morris W. - CALIFORNIA UNIV BERKELEY CENTER FOR PURE AND APPLIED MATHEMATICS - *NEURAL NETS - *COMPUTER ARCHITECTURE - *SYNCHRONIZATION(ELECTRONICS) - COUPLING(INTERACTION) - COMPUTERS - SEQUENCES - IDENTIFICATION - CONSTRUCTION - ASSOCIATIVE PROCESSING - COMMUNICATION AND RADIO SYSTEMS - SPEECH RECOGNITION - FLOW - SPEECH - VALUE - OSCILLATION - LEARNING - ANALOG SYSTEMS - PREPROCESSING - GRAMMARS.
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- Internet Archive ID: DTIC_ADA318037
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30Hybrid Algorithm For Optimized Clustering And Load Balancing Using Deep Q Reccurent Neural Networks In Cloud Computing
By Bulletin of Electrical Engineering and Informatics
Cloud services are among the technologies that are developing the fastest. Additionally, it is acknowledged that load balancing poses a major obstacle to reaching energy efficiency. Distributing the load among several resources in order to provide the best possible services is the main purpose of load balancing. The network's accessibility and dependability are increased through the usage of fault tolerance. An approach for hybrid deep learning (DL)-based load balancing is proposed in this paper. Tasks are first distributed in a round-robin fashion to every virtual machine (VM). When assessing whether a VM is overloaded or underloaded, the deep embedding cluster (DEC) also considers the central processing unit (CPU), bandwidth, memory, processing elements, and frequency scaling factors. For cloud load balancing, the tasks completed on the overloaded VM are assigned to the underloaded VM based on their value. To balance the load depending on many aspects like supply, demand, capacity, load, resource utilization, and fault tolerance, the deep Q recurrent neural network (DQRNN) is also suggested. Additionally, load, capacity, resource consumption, and success rate are used to evaluate the efficacy of this approach; optimum values of 0.147, 0.726, 0.527, and 0.895 are attained.
“Hybrid Algorithm For Optimized Clustering And Load Balancing Using Deep Q Reccurent Neural Networks In Cloud Computing” Metadata:
- Title: ➤ Hybrid Algorithm For Optimized Clustering And Load Balancing Using Deep Q Reccurent Neural Networks In Cloud Computing
- Author: ➤ Bulletin of Electrical Engineering and Informatics
- Language: English
“Hybrid Algorithm For Optimized Clustering And Load Balancing Using Deep Q Reccurent Neural Networks In Cloud Computing” Subjects and Themes:
- Subjects: Cloud computing - Deep embedding clusters - Deep Q network - Recurrent neural networks - Resource allocation
Edition Identifiers:
- Internet Archive ID: 10.11591eei.v14i2.9123
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31Emergent Computing Methods In Engineering Design : Applications Of Genetic Algorithms And Neural Networks
Cloud services are among the technologies that are developing the fastest. Additionally, it is acknowledged that load balancing poses a major obstacle to reaching energy efficiency. Distributing the load among several resources in order to provide the best possible services is the main purpose of load balancing. The network's accessibility and dependability are increased through the usage of fault tolerance. An approach for hybrid deep learning (DL)-based load balancing is proposed in this paper. Tasks are first distributed in a round-robin fashion to every virtual machine (VM). When assessing whether a VM is overloaded or underloaded, the deep embedding cluster (DEC) also considers the central processing unit (CPU), bandwidth, memory, processing elements, and frequency scaling factors. For cloud load balancing, the tasks completed on the overloaded VM are assigned to the underloaded VM based on their value. To balance the load depending on many aspects like supply, demand, capacity, load, resource utilization, and fault tolerance, the deep Q recurrent neural network (DQRNN) is also suggested. Additionally, load, capacity, resource consumption, and success rate are used to evaluate the efficacy of this approach; optimum values of 0.147, 0.726, 0.527, and 0.895 are attained.
“Emergent Computing Methods In Engineering Design : Applications Of Genetic Algorithms And Neural Networks” Metadata:
- Title: ➤ Emergent Computing Methods In Engineering Design : Applications Of Genetic Algorithms And Neural Networks
- Language: English
“Emergent Computing Methods In Engineering Design : Applications Of Genetic Algorithms And Neural Networks” Subjects and Themes:
- Subjects: ➤ Engineering design -- Congresses - Computer-aided design -- Congresses - Genetic algorithms -- Congresses - Neural networks (Computer science) -- Congresses
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- Internet Archive ID: isbn_9783540608738
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32Neural Soft Computing Based Secured Transmission Of Intraoral Gingivitis Image In E-health Care
By Arindam Sarkar, Joydeep Dey, Minakshi Chatterjee, Anirban Bhowmik, Sunil Karforma
In this paper, a key based soft computing transmission of intraoral gingivitis image has been proposed without the exchange of common key in between the nodes. Gingivitis has been a type of periodontal disease caused due to bacterial colonization inside the mouth, having the early signs of gum bleeding and inflammations in human beings. In E-health care strata, online transmission of such intraoral images with secured encryption technique is needed. Session key based neural soft computing transmission by the dentists has been proposed in this paper with an eye to preserve patients’ confidentiality factor. To resist the data distortion by the eavesdroppers while on the transmission path, secured transmission in a group of tree parity machines was carried out. Topologically same tree parity machines with equal seed values were used by all users of that specified group. A common session key synchronization method was applied in that group. Intraoral image has been encrypted to generate multiple secret shares. Multiple secrets were transmitted to individual nodes in that group. The original gingivitis image can only be reconstructed upon the merging of threshold number of shares. Regression statistics along with ANOVA analysis were carried out on the result set obtained from the proposed technique. The outcomes of such tests were satisfactory for acceptance.
“Neural Soft Computing Based Secured Transmission Of Intraoral Gingivitis Image In E-health Care” Metadata:
- Title: ➤ Neural Soft Computing Based Secured Transmission Of Intraoral Gingivitis Image In E-health Care
- Author: ➤ Arindam Sarkar, Joydeep Dey, Minakshi Chatterjee, Anirban Bhowmik, Sunil Karforma
- Language: English
“Neural Soft Computing Based Secured Transmission Of Intraoral Gingivitis Image In E-health Care” Subjects and Themes:
- Subjects: Gingivitis - Secret shares - Tree parity machine
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- Internet Archive ID: 21-15497-edit-lafi
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33Cellular Neural Networks And Visual Computing : Foundation And Applications
By Chua, Leon O., 1936-
In this paper, a key based soft computing transmission of intraoral gingivitis image has been proposed without the exchange of common key in between the nodes. Gingivitis has been a type of periodontal disease caused due to bacterial colonization inside the mouth, having the early signs of gum bleeding and inflammations in human beings. In E-health care strata, online transmission of such intraoral images with secured encryption technique is needed. Session key based neural soft computing transmission by the dentists has been proposed in this paper with an eye to preserve patients’ confidentiality factor. To resist the data distortion by the eavesdroppers while on the transmission path, secured transmission in a group of tree parity machines was carried out. Topologically same tree parity machines with equal seed values were used by all users of that specified group. A common session key synchronization method was applied in that group. Intraoral image has been encrypted to generate multiple secret shares. Multiple secrets were transmitted to individual nodes in that group. The original gingivitis image can only be reconstructed upon the merging of threshold number of shares. Regression statistics along with ANOVA analysis were carried out on the result set obtained from the proposed technique. The outcomes of such tests were satisfactory for acceptance.
“Cellular Neural Networks And Visual Computing : Foundation And Applications” Metadata:
- Title: ➤ Cellular Neural Networks And Visual Computing : Foundation And Applications
- Author: Chua, Leon O., 1936-
- Language: English
“Cellular Neural Networks And Visual Computing : Foundation And Applications” Subjects and Themes:
- Subjects: ➤ Neural networks (Computer science) - Neural Networks, Computer - Réseaux neuronaux (Informatique) - COMPUTERS -- Neural Networks - Zellulares neuronales Netz - Bildverarbeitung
Edition Identifiers:
- Internet Archive ID: cellularneuralne0000chua
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34VLSI Implementation Of Deep Neural Network Using Integral Stochastic Computing
By Arash Ardakani, François Leduc-Primeau, Naoya Onizawa, Takahiro Hanyu and Warren J. Gross
The hardware implementation of deep neural networks (DNNs) has recently received tremendous attention: many applications in fact require high-speed operations that suit a hardware implementation. However, numerous elements and complex interconnections are usually required, leading to a large area occupation and copious power consumption. Stochastic computing has shown promising results for low-power area-efficient hardware implementations, even though existing stochastic algorithms require long streams that cause long latencies. In this paper, we propose an integer form of stochastic computation and introduce some elementary circuits. We then propose an efficient implementation of a DNN based on integral stochastic computing. The proposed architecture has been implemented on a Virtex7 FPGA, resulting in 45% and 62% average reductions in area and latency compared to the best reported architecture in literature. We also synthesize the circuits in a 65 nm CMOS technology and we show that the proposed integral stochastic architecture results in up to 21% reduction in energy consumption compared to the binary radix implementation at the same misclassification rate. Due to fault-tolerant nature of stochastic architectures, we also consider a quasi-synchronous implementation which yields 33% reduction in energy consumption w.r.t. the binary radix implementation without any compromise on performance.
“VLSI Implementation Of Deep Neural Network Using Integral Stochastic Computing” Metadata:
- Title: ➤ VLSI Implementation Of Deep Neural Network Using Integral Stochastic Computing
- Authors: Arash ArdakaniFrançois Leduc-PrimeauNaoya OnizawaTakahiro HanyuWarren J. Gross
“VLSI Implementation Of Deep Neural Network Using Integral Stochastic Computing” Subjects and Themes:
- Subjects: ➤ Neural and Evolutionary Computing - Computing Research Repository - Hardware Architecture
Edition Identifiers:
- Internet Archive ID: arxiv-1509.08972
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35Granular Computing Neural-fuzzy Modelling: A Neutrosophic Approach
By Adrian Rubio Solis, George Panoutsos
Granular computing is a computational paradigm that mimics human cognition in terms of grouping similar information together. Compatibility operators such as cardinality, orientation, density, and multidimensional length act on both in raw data and information granules which are formed from raw data providing a framework for human-like information processing where information granulation is intrinsic. Granular computing, as a computational concept, is not new, however itis only relatively recent when this concept has been formalised computationally via the use of Computational Intelligence methods such as Fuzzy Logic and Rough Sets. Neutrosophy is a unifying field in logics that extents the concept of fuzzy sets into a three-valued logic that uses an indeterminacy value, and it is the basis of neutrosophic logic, neutrosophic probability, neutrosophic statistics and interval valued neutrosophic theory. In this paper we present a new framework for creating Granular Computing Neural-Fuzzy modelling structures via the use of Neutrosophic Logic to address the issue of uncertainty during the data granulation process. The theoretical and computational aspects of the approach are presented and discussed in this paper, as well as a case study using real industrial data. The case study under investigation is the predictive modelling of the Charpy Toughness of heat-treated steel; a process that exhibits very high uncertainty in the measurements due to the thermomechanical complexity of the Charpy test itself. The results show that the proposed approach leads to more meaningful and simpler granular models, with a better generalisation performance as compared to other recent modelling attempts on the same data set.
“Granular Computing Neural-fuzzy Modelling: A Neutrosophic Approach” Metadata:
- Title: ➤ Granular Computing Neural-fuzzy Modelling: A Neutrosophic Approach
- Author: ➤ Adrian Rubio Solis, George Panoutsos
- Language: English
“Granular Computing Neural-fuzzy Modelling: A Neutrosophic Approach” Subjects and Themes:
- Subjects: Granular computing - Information granulation - Neural-fuzzy logic - Neutrosophic logic - Charpy toughness
Edition Identifiers:
- Internet Archive ID: ➤ neutro-granular-computing-neural
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36DTIC ADA264056: Computing With Neural Maps: Application To Perceptual And Cognitive Function
By Defense Technical Information Center
Models for visual attention, based on the representation of an attentional space as a two dimensional map have led to a model of visual attention which has been successfully used in the application of a space-variant active vision system, described below. Also, it has been demonstrated that stereo fusion limits, such as Panum's fusional area, scale in a manner which is determined by the size of a cortical hypercolumn, and the local value of cortical magnification factor. This in turn supports the notion that stereo disparity is computed by a local correlational operator defined on the span of a single pair of ocular dominance columns A generalized image warp technique has been developed, which we term the 'protocolumn algorithm', which provides image level models of the mapping of ocular dominance and orientation column systems at the level of primary visual cortex. Finally, many of the ideas developed in this project have reached fruition in the construction of a space-variant active vision system. An initial prototype system has been constructed under hardware support from DARPA, and a number of difficult algorithmic problems in motor control, attention, space-variant image processing, and space-variant pattern classification, have begun to studied.... Visual cortex, Vision, Pattern recognition, Active vision.
“DTIC ADA264056: Computing With Neural Maps: Application To Perceptual And Cognitive Function” Metadata:
- Title: ➤ DTIC ADA264056: Computing With Neural Maps: Application To Perceptual And Cognitive Function
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA264056: Computing With Neural Maps: Application To Perceptual And Cognitive Function” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Schwartz, Eric L - NEW YORK UNIV MEDICAL CENTER NY - *PATTERN RECOGNITION - *VISUAL PERCEPTION - IMAGE PROCESSING - CONTROL - MODELS - AIR - TWO DIMENSIONAL - PROCESSING - COGNITION - MAPS - VISUAL CORTEX - MAGNIFICATION - ATTENTION - MOTORS - NUMBERS - VALUE - VISION - MAPPING - PROTOTYPES - CONSTRUCTION - SCALE - IMAGES - CLASSIFICATION - PATTERNS - RECOGNITION
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- Internet Archive ID: DTIC_ADA264056
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37DTIC ADA216689: Computing With Neural Maps: Application To Perceptual And Cognitive Functions
By Defense Technical Information Center
During the past year, we have completed two important steps in our program for understanding the biological and computational significance of patterns of spatial mapping in the brain. First, we have found a simple algorithm which is capable of describing and synthesizing the patterns of ocular dominance columns and orientation columns in the cat and monkey. This algorithm is controlled by a small number of parameters, and we show that it produces patterns which are simular to those in our lab, and elsewhere, obtained from animal experimentation. Moreover, we show that a number of previously published algorithms for simular purposes can be shown to be equivalent to our algorithm. The significance of this work is that we can now describe and synthesize some of the major architectural features of cat and monkey sensory cortex with high accuracy. In addition, we have obtained some insight into the essential simplicity of these patterns. This work is currently in press in Biological Cybernetics. In addition, we have developed an algorithm for pattern recognition based on the multiple, parallel two dimensional mapping of the input data. We view this as an important step in our goal of developing insight into the use of multiple, parallel sensory mappings in the brain. We believe that this algorithm is the first pattern recognition algorithm to make explicit use of the kind of data format which is characteristic of the brain.
“DTIC ADA216689: Computing With Neural Maps: Application To Perceptual And Cognitive Functions” Metadata:
- Title: ➤ DTIC ADA216689: Computing With Neural Maps: Application To Perceptual And Cognitive Functions
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA216689: Computing With Neural Maps: Application To Perceptual And Cognitive Functions” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Schwartz, Eric - NEW YORK UNIV MEDICAL CENTER NY DEPT OF PSYCHIATRY - *PSYCHOPHYSIOLOGY - *BRAIN - *COGNITION - *PATTERN RECOGNITION - DATA MANAGEMENT - BIOLOGY - PARAMETERS - ORIENTATION(DIRECTION) - ACCURACY - FORMATS - PATTERNS - NERVOUS SYSTEM - MAPS - MAPPING - EYE - PERCEPTION(PSYCHOLOGY) - SENSES(PHYSIOLOGY) - CYBERNETICS - MONKEYS - HIGH RATE - SPATIAL DISTRIBUTION - FUNCTIONS - ALGORITHMS - INPUT
Edition Identifiers:
- Internet Archive ID: DTIC_ADA216689
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38A G Uide To Neural Computing Applications
By Lionel Tarassenko
During the past year, we have completed two important steps in our program for understanding the biological and computational significance of patterns of spatial mapping in the brain. First, we have found a simple algorithm which is capable of describing and synthesizing the patterns of ocular dominance columns and orientation columns in the cat and monkey. This algorithm is controlled by a small number of parameters, and we show that it produces patterns which are simular to those in our lab, and elsewhere, obtained from animal experimentation. Moreover, we show that a number of previously published algorithms for simular purposes can be shown to be equivalent to our algorithm. The significance of this work is that we can now describe and synthesize some of the major architectural features of cat and monkey sensory cortex with high accuracy. In addition, we have obtained some insight into the essential simplicity of these patterns. This work is currently in press in Biological Cybernetics. In addition, we have developed an algorithm for pattern recognition based on the multiple, parallel two dimensional mapping of the input data. We view this as an important step in our goal of developing insight into the use of multiple, parallel sensory mappings in the brain. We believe that this algorithm is the first pattern recognition algorithm to make explicit use of the kind of data format which is characteristic of the brain.
“A G Uide To Neural Computing Applications” Metadata:
- Title: ➤ A G Uide To Neural Computing Applications
- Author: Lionel Tarassenko
- Language: English
“A G Uide To Neural Computing Applications” Subjects and Themes:
- Subjects: ➤ Neural networks (Computer science) - Neural computers.
Edition Identifiers:
- Internet Archive ID: guidetoneuralcom00tara
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39Depth Perception In Frogs And Toads : A Study In Neural Computing
By House, Donald, 1945-
During the past year, we have completed two important steps in our program for understanding the biological and computational significance of patterns of spatial mapping in the brain. First, we have found a simple algorithm which is capable of describing and synthesizing the patterns of ocular dominance columns and orientation columns in the cat and monkey. This algorithm is controlled by a small number of parameters, and we show that it produces patterns which are simular to those in our lab, and elsewhere, obtained from animal experimentation. Moreover, we show that a number of previously published algorithms for simular purposes can be shown to be equivalent to our algorithm. The significance of this work is that we can now describe and synthesize some of the major architectural features of cat and monkey sensory cortex with high accuracy. In addition, we have obtained some insight into the essential simplicity of these patterns. This work is currently in press in Biological Cybernetics. In addition, we have developed an algorithm for pattern recognition based on the multiple, parallel two dimensional mapping of the input data. We view this as an important step in our goal of developing insight into the use of multiple, parallel sensory mappings in the brain. We believe that this algorithm is the first pattern recognition algorithm to make explicit use of the kind of data format which is characteristic of the brain.
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- Title: ➤ Depth Perception In Frogs And Toads : A Study In Neural Computing
- Author: House, Donald, 1945-
- Language: English
“Depth Perception In Frogs And Toads : A Study In Neural Computing” Subjects and Themes:
- Subjects: ➤ Depth perception -- Computer simulation - Neural computers - Neural networks (Neurobiology) - Frogs -- Physiology - Toads -- Physiology - Anura -- anatomy & histology - Anura -- physiology - Depth Perception - Models, Neurological - Ordinateurs neuronaux - Perception de la profondeur -- Simulation par ordinateur - Grenouilles -- Physiologie - Crapauds -- Physiologie - Réseaux nerveux - Depth perception Computer simulation - Frogs Physiology - Toads Physiology
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40Social Influence Modulates Prosocial Decision-making Under Time Pressure: Computing And Neural Mechanisms
By LIUZHENGJIE and CUI Fang
This project aims to explore how social influence affects individuals' prosocial decision-making under time pressure, as well as the computational and neural mechanisms underlying this process, through two studies.
“Social Influence Modulates Prosocial Decision-making Under Time Pressure: Computing And Neural Mechanisms” Metadata:
- Title: ➤ Social Influence Modulates Prosocial Decision-making Under Time Pressure: Computing And Neural Mechanisms
- Authors: LIUZHENGJIECUI Fang
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41Neural Computing Based Part Of Speech Tagger For Arabic Language
By Jabar H. Yousif
this paper aims to explore the implementation of part of speech tagger (POS) for Arabic Language using neural computing. The Arabic Language is one of the most important languages in the world. More than 422 million people use the Arabic Language as the primary media for writing and speaking. The part of speech is one crucial stage for most natural languages processing. Many factors affect the performance of POS including the type of language, the corpus size, the tag-set, the computation model. The artificial neural network (ANN) is modern paradigms that simulate the human behavior to learn, test and generalize the solutions. It maps the non-linear function into a simple linear model. Several researchers implemented the POS using ANN. This work proves that the using of ANN in utilizing the POS is achieving very well results. The performance has based the rate of accuracy, which most of the proposed models were obtained high accuracy between 90% and 99%. Besides, the using of neural models required less number of tag-sets for training and testing of the model. Most of NLP applications required accurate and fast POS, which is offered by the neural model.
“Neural Computing Based Part Of Speech Tagger For Arabic Language” Metadata:
- Title: ➤ Neural Computing Based Part Of Speech Tagger For Arabic Language
- Author: Jabar H. Yousif
- Language: English
“Neural Computing Based Part Of Speech Tagger For Arabic Language” Subjects and Themes:
- Subjects: Machine Learning - Natural Language Processing - Artificial Neural Network - POS - Arabic Text.
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- Internet Archive ID: ➤ neuralcomputingbasedpartofspeechtaggerforarabiclanguage
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42SYNERGY BETWEEN QUANTUM COMPUTING AND MACHINE LEARNING IN QUANTUM NEURAL NETWORK
By Sadia Rafi, Rana Muhammad Ali Maisam, Anum Zahid, Muhammad Haroon Yaqoob, Shoaib Ajmal, Adnan Azam
Machine learning has made significant contributions to the fields of chemistry and materials science, enabling the exploration of vast chemical space through large-scale quantum chemical calculations. These models provide fast and accurate predictions of atomistic chemical properties, but they have limitations when it comes to capturing the electronic degrees of freedom of a molecule. This restricts their application in reactive chemistry and chemical analysis. To address this limitation, we introduce a deep learning framework that predicts the quantum mechanical wavefunction of a molecule in a local basis of atomic orbitals. The wavefunction serves as a foundational representation from which all other ground-state properties can be derived. Our approach maintains complete access to the electronic structure through the wavefunction, while achieving computational efficiency comparable to force-field methods. Moreover, the framework captures quantum mechanics in a form that can be analytically differentiated, allowing for efficient optimization and exploration of chemical systems. We demonstrate the potential of our approach through several examples. By leveraging the predicted wavefunction, we showcase the ability to perform inverse design of molecular structures to target specific electronic property optimizations. This opens exciting avenues for tailoring molecular structures to achieve desired electronic characteristics. Additionally, our framework paves the way for enhanced synergy between machine learning and quantum chemistry, enabling more comprehensive investigations into complex chemical systems.
“SYNERGY BETWEEN QUANTUM COMPUTING AND MACHINE LEARNING IN QUANTUM NEURAL NETWORK” Metadata:
- Title: ➤ SYNERGY BETWEEN QUANTUM COMPUTING AND MACHINE LEARNING IN QUANTUM NEURAL NETWORK
- Author: ➤ Sadia Rafi, Rana Muhammad Ali Maisam, Anum Zahid, Muhammad Haroon Yaqoob, Shoaib Ajmal, Adnan Azam
- Language: English
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- Internet Archive ID: ➤ httpscajmtcs.centralasianstudies.orgindex.phpcajmtcsarticleview505
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43Neural Computing Mechanism Of Badminton Decision-making Based On Drift-diffusion Model
By Haofei Miao
Experiment 1: The Impact of Action Information on the Accumulation Speed and Threshold of Badminton Decision-Making: Based on Behavioral Models Purpose: 1. To construct a drift diffusion model to clarify the differences in the speed of evidence accumulation and thresholds between experts and novices. 2. To determine whether the greatest difference in the processing of action information occurs 50ms before the stroke between experts and novices. Method: A mixed design with two factors: 2 (Sports Experience: Expert vs. Novice) * 3 (Information Quantity: 950ms vs. 1000ms vs. 1050ms). Experiment 2: The Influence of Sports Experience on the Accumulation Speed and Threshold of Badminton Decision-Making 1. To clarify indicators related to the speed of information accumulation and thresholds in the decision-making process. 2. To integrate electroencephalogram (EEG) indicators into a neural computational model of action information processing. Method: A single-factor between-subjects design: 2 (Sports Experience: Expert vs. Novice). Neural modeling. Experiment 3: The Impact of Prior Information Consistency on Badminton Decision-Making Purpose: 1. To clarify how static situational information (prior information) facilitates decision-making by accelerating the speed of evidence accumulation and reducing the decision-making threshold. Method: A mixed design with two factors: 2 (Sports Experience: Expert vs. Novice) * 2 (Consistency: Consistent vs. Inconsistent vs. Neutral). Experiment 4: The Influence of Prior Information on Badminton Decision-Making: The Moderating Role of Time Pressure Purpose: 1. To clarify the moderating role of dynamic situational information (time pressure) in the influence of prior information on badminton decision-making. Method: A two-factor within-subjects design: 2 (Consistency: Consistent vs. Inconsistent) * 2 (Time Pressure: Long Response Window vs. Short Response Window).
“Neural Computing Mechanism Of Badminton Decision-making Based On Drift-diffusion Model” Metadata:
- Title: ➤ Neural Computing Mechanism Of Badminton Decision-making Based On Drift-diffusion Model
- Author: Haofei Miao
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- Internet Archive ID: osf-registrations-8znvh-v1
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44Fuzzy Sets, Neural Networks, And Soft Computing
Experiment 1: The Impact of Action Information on the Accumulation Speed and Threshold of Badminton Decision-Making: Based on Behavioral Models Purpose: 1. To construct a drift diffusion model to clarify the differences in the speed of evidence accumulation and thresholds between experts and novices. 2. To determine whether the greatest difference in the processing of action information occurs 50ms before the stroke between experts and novices. Method: A mixed design with two factors: 2 (Sports Experience: Expert vs. Novice) * 3 (Information Quantity: 950ms vs. 1000ms vs. 1050ms). Experiment 2: The Influence of Sports Experience on the Accumulation Speed and Threshold of Badminton Decision-Making 1. To clarify indicators related to the speed of information accumulation and thresholds in the decision-making process. 2. To integrate electroencephalogram (EEG) indicators into a neural computational model of action information processing. Method: A single-factor between-subjects design: 2 (Sports Experience: Expert vs. Novice). Neural modeling. Experiment 3: The Impact of Prior Information Consistency on Badminton Decision-Making Purpose: 1. To clarify how static situational information (prior information) facilitates decision-making by accelerating the speed of evidence accumulation and reducing the decision-making threshold. Method: A mixed design with two factors: 2 (Sports Experience: Expert vs. Novice) * 2 (Consistency: Consistent vs. Inconsistent vs. Neutral). Experiment 4: The Influence of Prior Information on Badminton Decision-Making: The Moderating Role of Time Pressure Purpose: 1. To clarify the moderating role of dynamic situational information (time pressure) in the influence of prior information on badminton decision-making. Method: A two-factor within-subjects design: 2 (Consistency: Consistent vs. Inconsistent) * 2 (Time Pressure: Long Response Window vs. Short Response Window).
“Fuzzy Sets, Neural Networks, And Soft Computing” Metadata:
- Title: ➤ Fuzzy Sets, Neural Networks, And Soft Computing
- Language: English
“Fuzzy Sets, Neural Networks, And Soft Computing” Subjects and Themes:
- Subjects: ➤ Expert systems (Computer science) - Fuzzy sets - Neural networks (Computer science) - Soft computing
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- Internet Archive ID: fuzzysetsneuraln0000unse
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45Learning And Soft Computing : Support Vector Machines, Neural Networks, And Fuzzy Logic Models
By Kecman, V. (Vojislav), 1948-
Experiment 1: The Impact of Action Information on the Accumulation Speed and Threshold of Badminton Decision-Making: Based on Behavioral Models Purpose: 1. To construct a drift diffusion model to clarify the differences in the speed of evidence accumulation and thresholds between experts and novices. 2. To determine whether the greatest difference in the processing of action information occurs 50ms before the stroke between experts and novices. Method: A mixed design with two factors: 2 (Sports Experience: Expert vs. Novice) * 3 (Information Quantity: 950ms vs. 1000ms vs. 1050ms). Experiment 2: The Influence of Sports Experience on the Accumulation Speed and Threshold of Badminton Decision-Making 1. To clarify indicators related to the speed of information accumulation and thresholds in the decision-making process. 2. To integrate electroencephalogram (EEG) indicators into a neural computational model of action information processing. Method: A single-factor between-subjects design: 2 (Sports Experience: Expert vs. Novice). Neural modeling. Experiment 3: The Impact of Prior Information Consistency on Badminton Decision-Making Purpose: 1. To clarify how static situational information (prior information) facilitates decision-making by accelerating the speed of evidence accumulation and reducing the decision-making threshold. Method: A mixed design with two factors: 2 (Sports Experience: Expert vs. Novice) * 2 (Consistency: Consistent vs. Inconsistent vs. Neutral). Experiment 4: The Influence of Prior Information on Badminton Decision-Making: The Moderating Role of Time Pressure Purpose: 1. To clarify the moderating role of dynamic situational information (time pressure) in the influence of prior information on badminton decision-making. Method: A two-factor within-subjects design: 2 (Consistency: Consistent vs. Inconsistent) * 2 (Time Pressure: Long Response Window vs. Short Response Window).
“Learning And Soft Computing : Support Vector Machines, Neural Networks, And Fuzzy Logic Models” Metadata:
- Title: ➤ Learning And Soft Computing : Support Vector Machines, Neural Networks, And Fuzzy Logic Models
- Author: Kecman, V. (Vojislav), 1948-
- Language: English
Edition Identifiers:
- Internet Archive ID: learningsoftcomp0000kecm_f2w0
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46A Neural Network Approach To Predicting And Computing Knot Invariants
By Mark C. Hughes
In this paper we use artificial neural networks to predict and help compute the values of certain knot invariants. In particular, we show that neural networks are able to predict when a knot is quasipositive with a high degree of accuracy. Given a knot with unknown quasipositivity we use these predictions to identify braid representatives that are likely to be quasipositive, which we then subject to further testing to verify. Using these techniques we identify 84 new quasipositive 11 and 12-crossing knots. Furthermore, we show that neural networks are also able to predict and help compute the slice genus and Ozsv\'{a}th-Szab\'{o} $\tau$-invariant of knots.
“A Neural Network Approach To Predicting And Computing Knot Invariants” Metadata:
- Title: ➤ A Neural Network Approach To Predicting And Computing Knot Invariants
- Author: Mark C. Hughes
“A Neural Network Approach To Predicting And Computing Knot Invariants” Subjects and Themes:
- Subjects: Geometric Topology - Mathematics
Edition Identifiers:
- Internet Archive ID: arxiv-1610.05744
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47Posner Computing: A Quantum Neural Network Model
By James L. Ulrich
We present a construction, rendered in Quipper, of a quantum algorithm which probabilistically computes a classical function from n bits to n bits. The construction is intended to be of interest primarily for the features of Quipper it highlights. However, intrigued by the utility of quantum information processing in the context of neural networks, we present the algorithm as a simplest example of a particular quantum neural network which we first define. As the definition is inspired by recent work of Fisher concerning possible quantum substrates to cognition, we precede it with a short description of that work.
“Posner Computing: A Quantum Neural Network Model” Metadata:
- Title: ➤ Posner Computing: A Quantum Neural Network Model
- Author: James L. Ulrich
“Posner Computing: A Quantum Neural Network Model” Subjects and Themes:
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- Internet Archive ID: arxiv-1601.07137
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48DTIC ADA211824: Optical Computing Based On The Hopfield Model For Neural Networks
By Defense Technical Information Center
Associative memories are one of the most interesting applications of neural networks. In general, an associative memory stores a set of information, called memories. The information is stored in a format such that when an external stimulus is presented into the system, the system evolves to a stable state that is closest to the input data. We can view this process as a content- addressable memory since the stored memory is retrieved by the contents of the input and not by the specific address. In other words, the memory can recognize distorted inputs as long as the input provides sufficient information. Later in this report we will show the characteristics of the associative memory by presenting distorted versions of the stored images, e.g., rotated, scaled, shifted ones, etc. to the system and see how it converges.
“DTIC ADA211824: Optical Computing Based On The Hopfield Model For Neural Networks” Metadata:
- Title: ➤ DTIC ADA211824: Optical Computing Based On The Hopfield Model For Neural Networks
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA211824: Optical Computing Based On The Hopfield Model For Neural Networks” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Psaltis, Demetri - CALIFORNIA INST OF TECH PASADENA DEPT OF ELECTRICAL ENGINEERING - *NEURAL NETS - *COGNITION - COMPUTATIONS - MEMORY(PSYCHOLOGY) - OPTICAL PROCESSING - IMAGES - ASSOCIATIVE PROCESSING - EXTERNAL - VISION - STIMULI - STABILITY - INPUT - MEMORY DEVICES
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- Internet Archive ID: DTIC_ADA211824
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49Control PID Fuzzy Logic Is Neural Computing The Keyt T Artificial Intelligence OCR
Associative memories are one of the most interesting applications of neural networks. In general, an associative memory stores a set of information, called memories. The information is stored in a format such that when an external stimulus is presented into the system, the system evolves to a stable state that is closest to the input data. We can view this process as a content- addressable memory since the stored memory is retrieved by the contents of the input and not by the specific address. In other words, the memory can recognize distorted inputs as long as the input provides sufficient information. Later in this report we will show the characteristics of the associative memory by presenting distorted versions of the stored images, e.g., rotated, scaled, shifted ones, etc. to the system and see how it converges.
“Control PID Fuzzy Logic Is Neural Computing The Keyt T Artificial Intelligence OCR” Metadata:
- Title: ➤ Control PID Fuzzy Logic Is Neural Computing The Keyt T Artificial Intelligence OCR
- Language: English
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- Internet Archive ID: ➤ ControlPIDFuzzyLogic-IDC_FundamentalsofControlSystems
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50ECP 3126 - Knowledge System And Neural Computing
By Faculty of Engineering and Technology, FET
TRI 2 2017 / 2018
“ECP 3126 - Knowledge System And Neural Computing” Metadata:
- Title: ➤ ECP 3126 - Knowledge System And Neural Computing
- Author: ➤ Faculty of Engineering and Technology, FET
- Language: English
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- Internet Archive ID: mmu-eprint-3297
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Available books for downloads and borrow from The Open Library
1Neural computing
By Philip D. Wasserman

“Neural computing” Metadata:
- Title: Neural computing
- Author: Philip D. Wasserman
- Language: English
- Number of Pages: Median: 230
- Publisher: Van Nostrand Reinhold
- Publish Date: 1989
- Publish Location: New York
“Neural computing” Subjects and Themes:
- Subjects: Neural computers - Ordinateurs neuronaux - Neurale netwerken
Edition Identifiers:
- The Open Library ID: OL2056464M
- Online Computer Library Center (OCLC) ID: 507548450 - 18948905
- Library of Congress Control Number (LCCN): 88034842
- All ISBNs: 9780442207434 - 0442207433
Access and General Info:
- First Year Published: 1989
- Is Full Text Available: Yes
- Is The Book Public: No
- Access Status: Borrowable
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2Advanced methods in neural computing
By Philip D. Wasserman

“Advanced methods in neural computing” Metadata:
- Title: ➤ Advanced methods in neural computing
- Author: Philip D. Wasserman
- Language: English
- Number of Pages: Median: 255
- Publisher: Van Nostrand Reinhold
- Publish Date: 1993
- Publish Location: New York
“Advanced methods in neural computing” Subjects and Themes:
- Subjects: ➤ Neural networks (Computer science) - Neural computers
Edition Identifiers:
- The Open Library ID: OL1404201M
- Online Computer Library Center (OCLC) ID: 27429729
- Library of Congress Control Number (LCCN): 93012320
- All ISBNs: 0442004613 - 9780442004613
Access and General Info:
- First Year Published: 1993
- Is Full Text Available: Yes
- Is The Book Public: No
- Access Status: Borrowable
Online Access
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The book is not public therefore the download links will not allow the download of the entire book, however, borrowing the book online is available.
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