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Modelling Binary Data by D. Collett
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1A Family Of Blockwise One-Factor Distributions For Modelling High-Dimensional Binary Data
By Matthieu Marbac and Mohammed Sedki
We introduce a new family of one factor distributions for high-dimensional binary data. The model provides an explicit probability for each event, thus avoiding the numeric approximations often made by existing methods. Model interpretation is easy since each variable is described by two continuous parameters (corresponding to its marginal probability and to its strength of dependency with the other variables) and by one binary parameter (defining if the dependencies are positive or negative). An extension of this new model is proposed by assuming that the variables are split into independent blocks which follow the new one factor distribution. Parameter estimation is performed by the inference margin procedure where the second step is achieved by an expectation-maximization algorithm. Model selection is carried out by a deterministic approach which strongly reduces the number of competing models. This approach uses a hierarchical ascendant classification of the variables based on the empirical version of Cramer's V for selecting a narrow subset of models. The consistency of such procedure is shown. The new model is evaluated on numerical experiments and on a real data set. The procedure is implemented in the R package MvBinary available on CRAN.
“A Family Of Blockwise One-Factor Distributions For Modelling High-Dimensional Binary Data” Metadata:
- Title: ➤ A Family Of Blockwise One-Factor Distributions For Modelling High-Dimensional Binary Data
- Authors: Matthieu MarbacMohammed Sedki
“A Family Of Blockwise One-Factor Distributions For Modelling High-Dimensional Binary Data” Subjects and Themes:
- Subjects: Methodology - Statistics
Edition Identifiers:
- Internet Archive ID: arxiv-1511.01343
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The book is available for download in "texts" format, the size of the file-s is: 0.56 Mbs, the file-s for this book were downloaded 21 times, the file-s went public at Thu Jun 28 2018.
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2Modelling Binary Data, Second Edition
By Collett, David
We introduce a new family of one factor distributions for high-dimensional binary data. The model provides an explicit probability for each event, thus avoiding the numeric approximations often made by existing methods. Model interpretation is easy since each variable is described by two continuous parameters (corresponding to its marginal probability and to its strength of dependency with the other variables) and by one binary parameter (defining if the dependencies are positive or negative). An extension of this new model is proposed by assuming that the variables are split into independent blocks which follow the new one factor distribution. Parameter estimation is performed by the inference margin procedure where the second step is achieved by an expectation-maximization algorithm. Model selection is carried out by a deterministic approach which strongly reduces the number of competing models. This approach uses a hierarchical ascendant classification of the variables based on the empirical version of Cramer's V for selecting a narrow subset of models. The consistency of such procedure is shown. The new model is evaluated on numerical experiments and on a real data set. The procedure is implemented in the R package MvBinary available on CRAN.
“Modelling Binary Data, Second Edition” Metadata:
- Title: ➤ Modelling Binary Data, Second Edition
- Author: Collett, David
- Language: English
“Modelling Binary Data, Second Edition” Subjects and Themes:
- Subjects: ➤ Analysis of variance - Distribution (Probability theory) - Linear models (Statistics) - Analysis of Variance - Analyse de variance - Distribution (Théorie des probabilités) - distribution (statistics-related concept) - MATHEMATICS -- Applied - MATHEMATICS -- Probability & Statistics -- General
Edition Identifiers:
- Internet Archive ID: modellingbinaryd0000coll_c2h3
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 1183.58 Mbs, the file-s for this book were downloaded 84 times, the file-s went public at Mon Jun 12 2023.
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ACS Encrypted PDF - Cloth Cover Detection Log - DjVuTXT - Djvu XML - Dublin Core - Item Tile - JPEG Thumb - JSON - LCP Encrypted EPUB - LCP Encrypted PDF - Log - MARC - MARC Binary - Metadata - OCR Page Index - OCR Search Text - PNG - Page Numbers JSON - RePublisher Final Processing Log - RePublisher Initial Processing Log - Scandata - Single Page Original JP2 Tar - Single Page Processed JP2 ZIP - Text PDF - Title Page Detection Log - chOCR - hOCR -
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3Modelling Binary Data
By Collett, D., 1952-
We introduce a new family of one factor distributions for high-dimensional binary data. The model provides an explicit probability for each event, thus avoiding the numeric approximations often made by existing methods. Model interpretation is easy since each variable is described by two continuous parameters (corresponding to its marginal probability and to its strength of dependency with the other variables) and by one binary parameter (defining if the dependencies are positive or negative). An extension of this new model is proposed by assuming that the variables are split into independent blocks which follow the new one factor distribution. Parameter estimation is performed by the inference margin procedure where the second step is achieved by an expectation-maximization algorithm. Model selection is carried out by a deterministic approach which strongly reduces the number of competing models. This approach uses a hierarchical ascendant classification of the variables based on the empirical version of Cramer's V for selecting a narrow subset of models. The consistency of such procedure is shown. The new model is evaluated on numerical experiments and on a real data set. The procedure is implemented in the R package MvBinary available on CRAN.
“Modelling Binary Data” Metadata:
- Title: Modelling Binary Data
- Author: Collett, D., 1952-
- Language: English
“Modelling Binary Data” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: modellingbinaryd0000coll
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 921.57 Mbs, the file-s for this book were downloaded 81 times, the file-s went public at Mon May 08 2023.
Available formats:
ACS Encrypted PDF - Cloth Cover Detection Log - DjVuTXT - Djvu XML - Dublin Core - Extra Metadata JSON - Item Tile - JPEG Thumb - JSON - LCP Encrypted EPUB - LCP Encrypted PDF - Log - MARC - MARC Binary - Metadata - Metadata Log - OCR Page Index - OCR Search Text - PNG - Page Numbers JSON - RePublisher Final Processing Log - RePublisher Initial Processing Log - Scandata - Single Page Original JP2 Tar - Single Page Processed JP2 ZIP - Text PDF - Title Page Detection Log - chOCR - hOCR -
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