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Generative Deep Learning by David Foster
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1Deep Generative Learning Of Location-invariant Visual Word Recognition.
By Di Bono, Maria Grazia and Zorzi, Marco
This article is from Frontiers in Psychology , volume 4 . Abstract It is widely believed that orthographic processing implies an approximate, flexible coding of letter position, as shown by relative-position and transposition priming effects in visual word recognition. These findings have inspired alternative proposals about the representation of letter position, ranging from noisy coding across the ordinal positions to relative position coding based on open bigrams. This debate can be cast within the broader problem of learning location-invariant representations of written words, that is, a coding scheme abstracting the identity and position of letters (and combinations of letters) from their eye-centered (i.e., retinal) locations. We asked whether location-invariance would emerge from deep unsupervised learning on letter strings and what type of intermediate coding would emerge in the resulting hierarchical generative model. We trained a deep network with three hidden layers on an artificial dataset of letter strings presented at five possible retinal locations. Though word-level information (i.e., word identity) was never provided to the network during training, linear decoding from the activity of the deepest hidden layer yielded near-perfect accuracy in location-invariant word recognition. Conversely, decoding from lower layers yielded a large number of transposition errors. Analyses of emergent internal representations showed that word selectivity and location invariance increased as a function of layer depth. Word-tuning and location-invariance were found at the level of single neurons, but there was no evidence for bigram coding. Finally, the distributed internal representation of words at the deepest layer showed higher similarity to the representation elicited by the two exterior letters than by other combinations of two contiguous letters, in agreement with the hypothesis that word edges have special status. These results reveal that the efficient coding of written words—which was the model's learning objective—is largely based on letter-level information.
“Deep Generative Learning Of Location-invariant Visual Word Recognition.” Metadata:
- Title: ➤ Deep Generative Learning Of Location-invariant Visual Word Recognition.
- Authors: Di Bono, Maria GraziaZorzi, Marco
- Language: English
Edition Identifiers:
- Internet Archive ID: pubmed-PMC3776941
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The book is available for download in "texts" format, the size of the file-s is: 10.74 Mbs, the file-s for this book were downloaded 90 times, the file-s went public at Mon Oct 27 2014.
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2Max-Margin Deep Generative Models For (Semi-)Supervised Learning
By Chongxuan Li, Jun Zhu and Bo Zhang
Deep generative models (DGMs) are effective on learning multilayered representations of complex data and performing inference of input data by exploring the generative ability. However, it is relatively insufficient to empower the discriminative ability of DGMs on making accurate predictions. This paper presents max-margin deep generative models (mmDGMs) and a class-conditional variant (mmDCGMs), which explore the strongly discriminative principle of max-margin learning to improve the predictive performance of DGMs in both supervised and semi-supervised learning, while retaining the generative capability. In semi-supervised learning, we use the predictions of a max-margin classifier as the missing labels instead of performing full posterior inference for efficiency; we also introduce additional max-margin and label-balance regularization terms of unlabeled data for effectiveness. We develop an efficient doubly stochastic subgradient algorithm for the piecewise linear objectives in different settings. Empirical results on various datasets demonstrate that: (1) max-margin learning can significantly improve the prediction performance of DGMs and meanwhile retain the generative ability; (2) in supervised learning, mmDGMs are competitive to the best fully discriminative networks when employing convolutional neural networks as the generative and recognition models; and (3) in semi-supervised learning, mmDCGMs can perform efficient inference and achieve state-of-the-art classification results on several benchmarks.
“Max-Margin Deep Generative Models For (Semi-)Supervised Learning” Metadata:
- Title: ➤ Max-Margin Deep Generative Models For (Semi-)Supervised Learning
- Authors: Chongxuan LiJun ZhuBo Zhang
“Max-Margin Deep Generative Models For (Semi-)Supervised Learning” Subjects and Themes:
- Subjects: ➤ Machine Learning - Statistics - Computer Vision and Pattern Recognition - Computing Research Repository - Learning
Edition Identifiers:
- Internet Archive ID: arxiv-1611.07119
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The book is available for download in "texts" format, the size of the file-s is: 3.97 Mbs, the file-s for this book were downloaded 22 times, the file-s went public at Fri Jun 29 2018.
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3Semi-Supervised Learning With Deep Generative Models
By Diederik P. Kingma, Danilo J. Rezende, Shakir Mohamed and Max Welling
The ever-increasing size of modern data sets combined with the difficulty of obtaining label information has made semi-supervised learning one of the problems of significant practical importance in modern data analysis. We revisit the approach to semi-supervised learning with generative models and develop new models that allow for effective generalisation from small labelled data sets to large unlabelled ones. Generative approaches have thus far been either inflexible, inefficient or non-scalable. We show that deep generative models and approximate Bayesian inference exploiting recent advances in variational methods can be used to provide significant improvements, making generative approaches highly competitive for semi-supervised learning.
“Semi-Supervised Learning With Deep Generative Models” Metadata:
- Title: ➤ Semi-Supervised Learning With Deep Generative Models
- Authors: Diederik P. KingmaDanilo J. RezendeShakir MohamedMax Welling
“Semi-Supervised Learning With Deep Generative Models” Subjects and Themes:
- Subjects: Machine Learning - Computing Research Repository - Statistics - Learning
Edition Identifiers:
- Internet Archive ID: arxiv-1406.5298
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The book is available for download in "texts" format, the size of the file-s is: 0.73 Mbs, the file-s for this book were downloaded 29 times, the file-s went public at Sat Jun 30 2018.
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4Unsupervised Representation Learning With Deep Convolutional Generative Adversarial Networks
By Alec Radford, Luke Metz and Soumith Chintala
In recent years, supervised learning with convolutional networks (CNNs) has seen huge adoption in computer vision applications. Comparatively, unsupervised learning with CNNs has received less attention. In this work we hope to help bridge the gap between the success of CNNs for supervised learning and unsupervised learning. We introduce a class of CNNs called deep convolutional generative adversarial networks (DCGANs), that have certain architectural constraints, and demonstrate that they are a strong candidate for unsupervised learning. Training on various image datasets, we show convincing evidence that our deep convolutional adversarial pair learns a hierarchy of representations from object parts to scenes in both the generator and discriminator. Additionally, we use the learned features for novel tasks - demonstrating their applicability as general image representations.
“Unsupervised Representation Learning With Deep Convolutional Generative Adversarial Networks” Metadata:
- Title: ➤ Unsupervised Representation Learning With Deep Convolutional Generative Adversarial Networks
- Authors: Alec RadfordLuke MetzSoumith Chintala
“Unsupervised Representation Learning With Deep Convolutional Generative Adversarial Networks” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: arxiv-1511.06434
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The book is available for download in "texts" format, the size of the file-s is: 7.14 Mbs, the file-s for this book were downloaded 61 times, the file-s went public at Thu Jun 28 2018.
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5Learning Deep Generative Models With Doubly Stochastic MCMC
By Chao Du, Jun Zhu and Bo Zhang
We present doubly stochastic gradient MCMC, a simple and generic method for (approximate) Bayesian inference of deep generative models (DGMs) in a collapsed continuous parameter space. At each MCMC sampling step, the algorithm randomly draws a mini-batch of data samples to estimate the gradient of log-posterior and further estimates the intractable expectation over hidden variables via a neural adaptive importance sampler, where the proposal distribution is parameterized by a deep neural network and learnt jointly. We demonstrate the effectiveness on learning various DGMs in a wide range of tasks, including density estimation, data generation and missing data imputation. Our method outperforms many state-of-the-art competitors.
“Learning Deep Generative Models With Doubly Stochastic MCMC” Metadata:
- Title: ➤ Learning Deep Generative Models With Doubly Stochastic MCMC
- Authors: Chao DuJun ZhuBo Zhang
- Language: English
“Learning Deep Generative Models With Doubly Stochastic MCMC” Subjects and Themes:
- Subjects: Computing Research Repository - Learning
Edition Identifiers:
- Internet Archive ID: arxiv-1506.04557
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The book is available for download in "texts" format, the size of the file-s is: 22.14 Mbs, the file-s for this book were downloaded 27 times, the file-s went public at Thu Jun 28 2018.
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6DeepCancer: Detecting Cancer Through Gene Expressions Via Deep Generative Learning
By Rajendra Rana Bhat, Vivek Viswanath and Xiaolin Li
Transcriptional profiling on microarrays to obtain gene expressions has been used to facilitate cancer diagnosis. We propose a deep generative machine learning architecture (called DeepCancer) that learn features from unlabeled microarray data. These models have been used in conjunction with conventional classifiers that perform classification of the tissue samples as either being cancerous or non-cancerous. The proposed model has been tested on two different clinical datasets. The evaluation demonstrates that DeepCancer model achieves a very high precision score, while significantly controlling the false positive and false negative scores.
“DeepCancer: Detecting Cancer Through Gene Expressions Via Deep Generative Learning” Metadata:
- Title: ➤ DeepCancer: Detecting Cancer Through Gene Expressions Via Deep Generative Learning
- Authors: Rajendra Rana BhatVivek ViswanathXiaolin Li
“DeepCancer: Detecting Cancer Through Gene Expressions Via Deep Generative Learning” Subjects and Themes:
- Subjects: Quantitative Biology - Genomics - Artificial Intelligence - Computing Research Repository - Learning
Edition Identifiers:
- Internet Archive ID: arxiv-1612.03211
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The book is available for download in "texts" format, the size of the file-s is: 1.55 Mbs, the file-s for this book were downloaded 27 times, the file-s went public at Fri Jun 29 2018.
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7Joint Multimodal Learning With Deep Generative Models
By Masahiro Suzuki, Kotaro Nakayama and Yutaka Matsuo
We investigate deep generative models that can exchange multiple modalities bi-directionally, e.g., generating images from corresponding texts and vice versa. Recently, some studies handle multiple modalities on deep generative models, such as variational autoencoders (VAEs). However, these models typically assume that modalities are forced to have a conditioned relation, i.e., we can only generate modalities in one direction. To achieve our objective, we should extract a joint representation that captures high-level concepts among all modalities and through which we can exchange them bi-directionally. As described herein, we propose a joint multimodal variational autoencoder (JMVAE), in which all modalities are independently conditioned on joint representation. In other words, it models a joint distribution of modalities. Furthermore, to be able to generate missing modalities from the remaining modalities properly, we develop an additional method, JMVAE-kl, that is trained by reducing the divergence between JMVAE's encoder and prepared networks of respective modalities. Our experiments show that our proposed method can obtain appropriate joint representation from multiple modalities and that it can generate and reconstruct them more properly than conventional VAEs. We further demonstrate that JMVAE can generate multiple modalities bi-directionally.
“Joint Multimodal Learning With Deep Generative Models” Metadata:
- Title: ➤ Joint Multimodal Learning With Deep Generative Models
- Authors: Masahiro SuzukiKotaro NakayamaYutaka Matsuo
“Joint Multimodal Learning With Deep Generative Models” Subjects and Themes:
- Subjects: Machine Learning - Learning - Computing Research Repository - Statistics
Edition Identifiers:
- Internet Archive ID: arxiv-1611.01891
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The book is available for download in "texts" format, the size of the file-s is: 0.78 Mbs, the file-s for this book were downloaded 19 times, the file-s went public at Fri Jun 29 2018.
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8Generative Deep Deconvolutional Learning
By Yunchen Pu, Xin Yuan and Lawrence Carin
A generative Bayesian model is developed for deep (multi-layer) convolutional dictionary learning. A novel probabilistic pooling operation is integrated into the deep model, yielding efficient bottom-up and top-down probabilistic learning. After learning the deep convolutional dictionary, testing is implemented via deconvolutional inference. To speed up this inference, a new statistical approach is proposed to project the top-layer dictionary elements to the data level. Following this, only one layer of deconvolution is required during testing. Experimental results demonstrate powerful capabilities of the model to learn multi-layer features from images. Excellent classification results are obtained on both the MNIST and Caltech 101 datasets.
“Generative Deep Deconvolutional Learning” Metadata:
- Title: ➤ Generative Deep Deconvolutional Learning
- Authors: Yunchen PuXin YuanLawrence Carin
“Generative Deep Deconvolutional Learning” Subjects and Themes:
- Subjects: Machine Learning - Computing Research Repository - Statistics - Learning
Edition Identifiers:
- Internet Archive ID: arxiv-1412.6039
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The book is available for download in "texts" format, the size of the file-s is: 3.00 Mbs, the file-s for this book were downloaded 47 times, the file-s went public at Sat Jun 30 2018.
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9Deep Learning Approach To Face Conditioning Using Invertible Conditional Generative Adversarial Networks (ICGAN)
By International Journal of Innovative Research in Computer Science and Technology (IJIRCST)
We propose another system for evaluating generative models by means of an ill-disposed process, in which we at the same time train two models: a generative model G that catches the information conveyance, and a discriminative model D that gauges the likelihood that an example originated from the preparation information as opposed to G. The preparation strategy for G is to expand the likelihood of D committing an error. This system compares to a minimax two-player game. In the space of discretionary capacities G and D, an interesting arrangement exists, with G recuperating the preparation information conveyance and D equivalent to 1/2 all over the place. For the situation where G and D are characterized by multilayer perceptions, the whole framework can be prepared with back propagation. There is no requirement for any Markov chains or unrolled estimated deduction systems during either preparing or age of tests. Investigations illustrate the capability of the system through subjective and quantitative assessment of the produced tests.
“Deep Learning Approach To Face Conditioning Using Invertible Conditional Generative Adversarial Networks (ICGAN)” Metadata:
- Title: ➤ Deep Learning Approach To Face Conditioning Using Invertible Conditional Generative Adversarial Networks (ICGAN)
- Author: ➤ International Journal of Innovative Research in Computer Science and Technology (IJIRCST)
- Language: English
“Deep Learning Approach To Face Conditioning Using Invertible Conditional Generative Adversarial Networks (ICGAN)” Subjects and Themes:
- Subjects: ICGAN - Face Conditioning - Deep Learning.
Edition Identifiers:
- Internet Archive ID: ➤ 24-deep-learning-approach-to-face-conditioning-using-invertible-conditional-gene
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The book is available for download in "texts" format, the size of the file-s is: 7.00 Mbs, the file-s for this book were downloaded 17 times, the file-s went public at Sun Sep 08 2024.
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10Layer-wise Learning Of Deep Generative Models
By Ludovic Arnold and Yann Ollivier
When using deep, multi-layered architectures to build generative models of data, it is difficult to train all layers at once. We propose a layer-wise training procedure admitting a performance guarantee compared to the global optimum. It is based on an optimistic proxy of future performance, the best latent marginal. We interpret auto-encoders in this setting as generative models, by showing that they train a lower bound of this criterion. We test the new learning procedure against a state of the art method (stacked RBMs), and find it to improve performance. Both theory and experiments highlight the importance, when training deep architectures, of using an inference model (from data to hidden variables) richer than the generative model (from hidden variables to data).
“Layer-wise Learning Of Deep Generative Models” Metadata:
- Title: ➤ Layer-wise Learning Of Deep Generative Models
- Authors: Ludovic ArnoldYann Ollivier
- Language: English
Edition Identifiers:
- Internet Archive ID: arxiv-1212.1524
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The book is available for download in "texts" format, the size of the file-s is: 24.97 Mbs, the file-s for this book were downloaded 140 times, the file-s went public at Mon Sep 23 2013.
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11Generative Engine Optimization For Deep Learning & AI Sites
Understand how Generative Engine Optimization (GEO) helps your brand get cited by AI tools and increase organic traffic in t oday’s AI-powered search landscape.
“Generative Engine Optimization For Deep Learning & AI Sites” Metadata:
- Title: ➤ Generative Engine Optimization For Deep Learning & AI Sites
“Generative Engine Optimization For Deep Learning & AI Sites” Subjects and Themes:
- Subjects: gpuserver - gpuhosting - deeplearning
Edition Identifiers:
- Internet Archive ID: ➤ generative-engine-optimization-for-deep-learning-ai-sites
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 3.72 Mbs, the file-s for this book were downloaded 4 times, the file-s went public at Sat Jul 19 2025.
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12A Generative Model For Deep Convolutional Learning
By Yunchen Pu, Xin Yuan and Lawrence Carin
A generative model is developed for deep (multi-layered) convolutional dictionary learning. A novel probabilistic pooling operation is integrated into the deep model, yielding efficient bottom-up (pretraining) and top-down (refinement) probabilistic learning. Experimental results demonstrate powerful capabilities of the model to learn multi-layer features from images, and excellent classification results are obtained on the MNIST and Caltech 101 datasets.
“A Generative Model For Deep Convolutional Learning” Metadata:
- Title: ➤ A Generative Model For Deep Convolutional Learning
- Authors: Yunchen PuXin YuanLawrence Carin
- Language: English
“A Generative Model For Deep Convolutional Learning” Subjects and Themes:
- Subjects: Machine Learning - Learning - Computing Research Repository - Statistics - Neural and Evolutionary Computing
Edition Identifiers:
- Internet Archive ID: arxiv-1504.04054
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The book is available for download in "texts" format, the size of the file-s is: 3.94 Mbs, the file-s for this book were downloaded 61 times, the file-s went public at Wed Jun 27 2018.
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13Exploration For Multi-task Reinforcement Learning With Deep Generative Models
By Sai Praveen Bangaru, JS Suhas and Balaraman Ravindran
Exploration in multi-task reinforcement learning is critical in training agents to deduce the underlying MDP. Many of the existing exploration frameworks such as $E^3$, $R_{max}$, Thompson sampling assume a single stationary MDP and are not suitable for system identification in the multi-task setting. We present a novel method to facilitate exploration in multi-task reinforcement learning using deep generative models. We supplement our method with a low dimensional energy model to learn the underlying MDP distribution and provide a resilient and adaptive exploration signal to the agent. We evaluate our method on a new set of environments and provide intuitive interpretation of our results.
“Exploration For Multi-task Reinforcement Learning With Deep Generative Models” Metadata:
- Title: ➤ Exploration For Multi-task Reinforcement Learning With Deep Generative Models
- Authors: Sai Praveen BangaruJS SuhasBalaraman Ravindran
“Exploration For Multi-task Reinforcement Learning With Deep Generative Models” Subjects and Themes:
- Subjects: Machine Learning - Statistics - Artificial Intelligence - Computing Research Repository - Learning
Edition Identifiers:
- Internet Archive ID: arxiv-1611.09894
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The book is available for download in "texts" format, the size of the file-s is: 1.21 Mbs, the file-s for this book were downloaded 25 times, the file-s went public at Fri Jun 29 2018.
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Available audio books for downloads from LibriVox
1Little Tales of the Desert
By Ethel Twycross Foster

A six year-old girl named Mary spends Christmas vacation with her parents in the Arizona desert of 1901 or thereabouts. ( Summary by BellonaTimes )
“Little Tales of the Desert” Metadata:
- Title: Little Tales of the Desert
- Author: Ethel Twycross Foster
- Language: English
- Publish Date: 1913
Edition Specifications:
- Format: Audio
- Number of Sections: 9
- Total Time: 0:47:15
Edition Identifiers:
- libriVox ID: 5949
Links and information:
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- File Name: littletalesdesert_bt_librivox
- File Format: zip
- Total Time: 0:47:15
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2Coquette, Or The History of Eliza Wharton
By Hannah Webster Foster

The classic early American epistolary novel about the seduction and ruin of a passionate young woman. Based on the true story of Elizabeth Whitman, whose lonesome death in childbirth in a Connecticut inn sparked widespread discussion and outrage, the novel went through many editions and innumerable printings in the century after its initial publication in 1797. (Summary by Jon Miller)
“Coquette, Or The History of Eliza Wharton” Metadata:
- Title: ➤ Coquette, Or The History of Eliza Wharton
- Author: Hannah Webster Foster
- Language: English
- Publish Date: 1797
Edition Specifications:
- Format: Audio
- Number of Sections: 14
- Total Time: 06:32:05
Edition Identifiers:
- libriVox ID: 7413
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- File Name: coquette_1508_librivox
- File Format: zip
- Total Time: 06:32:05
- Download Link: Download link
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3Heron Nest
By W. Bert Foster
Pleasant family drama set in early 1900's or late 1890's upstate New York. The Herron clan, led by heroic, inventive, handicapped older brother Billy, has fallen on hard times due to one of the depressions that occurred before the Great one of the 30's. He manages to charm their way out of the tenements and into the country where he and his younger siblings farm their way to success, albeit on a small, Waltons-esque scale. Features many detailed gardening tips. Minor quibble with a sub-plot involving borderline incest but all in all, an inspirational work for the get-er-dun generation. - Summary by BellonaTimes
“Heron Nest” Metadata:
- Title: Heron Nest
- Author: W. Bert Foster
- Language: English
- Publish Date: 1908
Edition Specifications:
- Format: Audio
- Number of Sections: 24
- Total Time: 07:42:12
Edition Identifiers:
- libriVox ID: 8898
Links and information:
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- Text Source: Hathitrust
- Number of Sections: 24 sections
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- File Name: heron_nest_1406_librivox
- File Format: zip
- Total Time: 07:42:12
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4War Stories for My Grandchildren
By John Watson Foster

After years of telling these stories to his grandchildren, Foster was prevailed on to write them down for future generations. Rather than rely on his memory, he conducted research for accuracy. He served as a colonel for the Union Army during the American Civil War and later went on to serve as U.S. Secretary of State under President Benjamin Harrison. - Summary by Lynne Thompson
“War Stories for My Grandchildren” Metadata:
- Title: ➤ War Stories for My Grandchildren
- Author: John Watson Foster
- Language: English
- Publish Date: 1918
Edition Specifications:
- Format: Audio
- Number of Sections: 12
- Total Time: 05:04:08
Edition Identifiers:
- libriVox ID: 12320
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- File Name: war_stories_for_my_grandchildren_1804_librivox
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- Total Time: 05:04:08
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5Gringo In Mañana-Land
By Harry La Tourette Foster
Foster was a World War I veteran, world wanderer, journalist, embassy attaché, stoker on ships, miner, stowaway, bandit’s prisoner in Mexico, who wrote of Latin America and the Orient. He died an early death of pneumonia at his mother’s house in New York state. This 1924 book is a prime example of his witty travel writing and close observation. The New York Times reported that in 1919 he started travelling and for some ten years he seldom remained in one place. (New York Times obituary 16 March 1932) (Summary by David Wales)
“Gringo In Mañana-Land” Metadata:
- Title: Gringo In Mañana-Land
- Author: Harry La Tourette Foster
- Language: English
- Publish Date: 1924
Edition Specifications:
- Format: Audio
- Number of Sections: 23
- Total Time: 08:42:27
Edition Identifiers:
- libriVox ID: 17021
Links and information:
- LibriVox Link: LibriVox
- Text Source: Org/details/gringoinmananala00fost
- Number of Sections: 23 sections
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- File Name: gringo_in_manana-land_2109_librivox
- File Format: zip
- Total Time: 08:42:27
- Download Link: Download link
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6Asgard Stories: Tales from Norse Mythology
By Mabel H. Cummings and Mary H. Foster

Asgard Stories - Tales from Norse Mythology. To all our Children who have loved the hearing of these Asgard Stories. This little volume is the outcome of several years experience in telling to classes of children the classic myths, both southern and northern. <br><br> "A broad simplicity, so very different from the light gracefulness of the old Greek paganism, distinguishes this Norse system. It is thought, the genuine thought of deep, rude, earnest minds, fairly opened to the things about them, - a face-to-face and heart-to-heart inspection of things, - the first characteristic of all good thought in all times." wrote Carlyle. <br><br> Anderson, the author of “Norse Mythology,” wrote: “In the Norse mythology the centralizing idea is its peculiar feature; in it lies its strength and beauty. The one myth and the one divinity is inextricably in communion with the other; and thus also the idea of unity, centralization, is a prominent feature and one of the chief characteristics of the Teutonic nations."
“Asgard Stories: Tales from Norse Mythology” Metadata:
- Title: ➤ Asgard Stories: Tales from Norse Mythology
- Authors: Mabel H. CummingsMary H. Foster
- Language: English
- Publish Date: 1901
Edition Specifications:
- Format: Audio
- Number of Sections: 14
- Total Time: 02:34:07
Edition Identifiers:
- libriVox ID: 17028
Links and information:
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- File Name: asgardstories_2110_librivox
- File Format: zip
- Total Time: 02:34:07
- Download Link: Download link
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7Mary's Little Lamb
By Edith Francis Foster

Learn how Mary acquires a Little Lamb, how it follows her to school, and many other adventures the pair have such as the lamb saving Mary's life. This book was written as a picture guessing book where some of the nouns were replaced by drawings and the young reader was supposed to guess what the pictures meant in the story. These pictures have been replaced by appropriate words. (Summary by mleigh)
“Mary's Little Lamb” Metadata:
- Title: Mary's Little Lamb
- Author: Edith Francis Foster
- Language: English
- Publish Date: 1903
Edition Specifications:
- Format: Audio
- Number of Sections: 12
- Total Time: 00:40:10
Edition Identifiers:
- libriVox ID: 19791
Links and information:
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- File Name: maryslittlelamb_2312_librivox
- File Format: zip
- Total Time: 00:40:10
- Download Link: Download link
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