Combinatorial Inference in Geometric Data Analysis

Combinatorial Inference in Geometric Data Analysis

Author: Brigitte Le Roux

Publisher: CRC Press

Published: 2019-03-20

Total Pages: 256

ISBN-13: 1498781624

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Geometric Data Analysis designates the approach of Multivariate Statistics that conceptualizes the set of observations as a Euclidean cloud of points. Combinatorial Inference in Geometric Data Analysis gives an overview of multidimensional statistical inference methods applicable to clouds of points that make no assumption on the process of generating data or distributions, and that are not based on random modelling but on permutation procedures recasting in a combinatorial framework. It focuses particularly on the comparison of a group of observations to a reference population (combinatorial test) or to a reference value of a location parameter (geometric test), and on problems of homogeneity, that is the comparison of several groups for two basic designs. These methods involve the use of combinatorial procedures to build a reference set in which we place the data. The chosen test statistics lead to original extensions, such as the geometric interpretation of the observed level, and the construction of a compatibility region. Features: Defines precisely the object under study in the context of multidimensional procedures, that is clouds of points Presents combinatorial tests and related computations with R and Coheris SPAD software Includes four original case studies to illustrate application of the tests Includes necessary mathematical background to ensure it is self–contained This book is suitable for researchers and students of multivariate statistics, as well as applied researchers of various scientific disciplines. It could be used for a specialized course taught at either master or PhD level.


Book Synopsis Combinatorial Inference in Geometric Data Analysis by : Brigitte Le Roux

Download or read book Combinatorial Inference in Geometric Data Analysis written by Brigitte Le Roux and published by CRC Press. This book was released on 2019-03-20 with total page 256 pages. Available in PDF, EPUB and Kindle. Book excerpt: Geometric Data Analysis designates the approach of Multivariate Statistics that conceptualizes the set of observations as a Euclidean cloud of points. Combinatorial Inference in Geometric Data Analysis gives an overview of multidimensional statistical inference methods applicable to clouds of points that make no assumption on the process of generating data or distributions, and that are not based on random modelling but on permutation procedures recasting in a combinatorial framework. It focuses particularly on the comparison of a group of observations to a reference population (combinatorial test) or to a reference value of a location parameter (geometric test), and on problems of homogeneity, that is the comparison of several groups for two basic designs. These methods involve the use of combinatorial procedures to build a reference set in which we place the data. The chosen test statistics lead to original extensions, such as the geometric interpretation of the observed level, and the construction of a compatibility region. Features: Defines precisely the object under study in the context of multidimensional procedures, that is clouds of points Presents combinatorial tests and related computations with R and Coheris SPAD software Includes four original case studies to illustrate application of the tests Includes necessary mathematical background to ensure it is self–contained This book is suitable for researchers and students of multivariate statistics, as well as applied researchers of various scientific disciplines. It could be used for a specialized course taught at either master or PhD level.


Combinatorial Inference in Geometric Data Analysis

Combinatorial Inference in Geometric Data Analysis

Author: Brigitte Le Roux

Publisher: CRC Press

Published: 2019-03-20

Total Pages: 234

ISBN-13: 1351651331

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Geometric Data Analysis designates the approach of Multivariate Statistics that conceptualizes the set of observations as a Euclidean cloud of points. Combinatorial Inference in Geometric Data Analysis gives an overview of multidimensional statistical inference methods applicable to clouds of points that make no assumption on the process of generating data or distributions, and that are not based on random modelling but on permutation procedures recasting in a combinatorial framework. It focuses particularly on the comparison of a group of observations to a reference population (combinatorial test) or to a reference value of a location parameter (geometric test), and on problems of homogeneity, that is the comparison of several groups for two basic designs. These methods involve the use of combinatorial procedures to build a reference set in which we place the data. The chosen test statistics lead to original extensions, such as the geometric interpretation of the observed level, and the construction of a compatibility region. Features: Defines precisely the object under study in the context of multidimensional procedures, that is clouds of points Presents combinatorial tests and related computations with R and Coheris SPAD software Includes four original case studies to illustrate application of the tests Includes necessary mathematical background to ensure it is self–contained This book is suitable for researchers and students of multivariate statistics, as well as applied researchers of various scientific disciplines. It could be used for a specialized course taught at either master or PhD level.


Book Synopsis Combinatorial Inference in Geometric Data Analysis by : Brigitte Le Roux

Download or read book Combinatorial Inference in Geometric Data Analysis written by Brigitte Le Roux and published by CRC Press. This book was released on 2019-03-20 with total page 234 pages. Available in PDF, EPUB and Kindle. Book excerpt: Geometric Data Analysis designates the approach of Multivariate Statistics that conceptualizes the set of observations as a Euclidean cloud of points. Combinatorial Inference in Geometric Data Analysis gives an overview of multidimensional statistical inference methods applicable to clouds of points that make no assumption on the process of generating data or distributions, and that are not based on random modelling but on permutation procedures recasting in a combinatorial framework. It focuses particularly on the comparison of a group of observations to a reference population (combinatorial test) or to a reference value of a location parameter (geometric test), and on problems of homogeneity, that is the comparison of several groups for two basic designs. These methods involve the use of combinatorial procedures to build a reference set in which we place the data. The chosen test statistics lead to original extensions, such as the geometric interpretation of the observed level, and the construction of a compatibility region. Features: Defines precisely the object under study in the context of multidimensional procedures, that is clouds of points Presents combinatorial tests and related computations with R and Coheris SPAD software Includes four original case studies to illustrate application of the tests Includes necessary mathematical background to ensure it is self–contained This book is suitable for researchers and students of multivariate statistics, as well as applied researchers of various scientific disciplines. It could be used for a specialized course taught at either master or PhD level.


Geometric and Topological Inference

Geometric and Topological Inference

Author: Jean-Daniel Boissonnat

Publisher: Cambridge University Press

Published: 2018-09-27

Total Pages: 247

ISBN-13: 1108317618

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Geometric and topological inference deals with the retrieval of information about a geometric object using only a finite set of possibly noisy sample points. It has connections to manifold learning and provides the mathematical and algorithmic foundations of the rapidly evolving field of topological data analysis. Building on a rigorous treatment of simplicial complexes and distance functions, this self-contained book covers key aspects of the field, from data representation and combinatorial questions to manifold reconstruction and persistent homology. It can serve as a textbook for graduate students or researchers in mathematics, computer science and engineering interested in a geometric approach to data science.


Book Synopsis Geometric and Topological Inference by : Jean-Daniel Boissonnat

Download or read book Geometric and Topological Inference written by Jean-Daniel Boissonnat and published by Cambridge University Press. This book was released on 2018-09-27 with total page 247 pages. Available in PDF, EPUB and Kindle. Book excerpt: Geometric and topological inference deals with the retrieval of information about a geometric object using only a finite set of possibly noisy sample points. It has connections to manifold learning and provides the mathematical and algorithmic foundations of the rapidly evolving field of topological data analysis. Building on a rigorous treatment of simplicial complexes and distance functions, this self-contained book covers key aspects of the field, from data representation and combinatorial questions to manifold reconstruction and persistent homology. It can serve as a textbook for graduate students or researchers in mathematics, computer science and engineering interested in a geometric approach to data science.


Geometric Data Analysis

Geometric Data Analysis

Author: Brigitte Le Roux

Publisher: Springer Science & Business Media

Published: 2006-01-16

Total Pages: 484

ISBN-13: 1402022360

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Geometric Data Analysis (GDA) is the name suggested by P. Suppes (Stanford University) to designate the approach to Multivariate Statistics initiated by Benzécri as Correspondence Analysis, an approach that has become more and more used and appreciated over the years. This book presents the full formalization of GDA in terms of linear algebra - the most original and far-reaching consequential feature of the approach - and shows also how to integrate the standard statistical tools such as Analysis of Variance, including Bayesian methods. Chapter 9, Research Case Studies, is nearly a book in itself; it presents the methodology in action on three extensive applications, one for medicine, one from political science, and one from education (data borrowed from the Stanford computer-based Educational Program for Gifted Youth ). Thus the readership of the book concerns both mathematicians interested in the applications of mathematics, and researchers willing to master an exceptionally powerful approach of statistical data analysis.


Book Synopsis Geometric Data Analysis by : Brigitte Le Roux

Download or read book Geometric Data Analysis written by Brigitte Le Roux and published by Springer Science & Business Media. This book was released on 2006-01-16 with total page 484 pages. Available in PDF, EPUB and Kindle. Book excerpt: Geometric Data Analysis (GDA) is the name suggested by P. Suppes (Stanford University) to designate the approach to Multivariate Statistics initiated by Benzécri as Correspondence Analysis, an approach that has become more and more used and appreciated over the years. This book presents the full formalization of GDA in terms of linear algebra - the most original and far-reaching consequential feature of the approach - and shows also how to integrate the standard statistical tools such as Analysis of Variance, including Bayesian methods. Chapter 9, Research Case Studies, is nearly a book in itself; it presents the methodology in action on three extensive applications, one for medicine, one from political science, and one from education (data borrowed from the Stanford computer-based Educational Program for Gifted Youth ). Thus the readership of the book concerns both mathematicians interested in the applications of mathematics, and researchers willing to master an exceptionally powerful approach of statistical data analysis.


Differential Geometry in Statistical Inference

Differential Geometry in Statistical Inference

Author: Shun'ichi Amari

Publisher: IMS

Published: 1987

Total Pages: 254

ISBN-13: 9780940600126

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Book Synopsis Differential Geometry in Statistical Inference by : Shun'ichi Amari

Download or read book Differential Geometry in Statistical Inference written by Shun'ichi Amari and published by IMS. This book was released on 1987 with total page 254 pages. Available in PDF, EPUB and Kindle. Book excerpt:


Regression Inside Out

Regression Inside Out

Author: Eric W. Schoon

Publisher: Cambridge University Press

Published: 2024-02-29

Total Pages: 281

ISBN-13: 1108841104

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Demonstrates new ways to extract knowledge from statistical data and unlock more nuanced interpretations than has previously been possible.


Book Synopsis Regression Inside Out by : Eric W. Schoon

Download or read book Regression Inside Out written by Eric W. Schoon and published by Cambridge University Press. This book was released on 2024-02-29 with total page 281 pages. Available in PDF, EPUB and Kindle. Book excerpt: Demonstrates new ways to extract knowledge from statistical data and unlock more nuanced interpretations than has previously been possible.


Multivariate scaling methods and the reconstruction of social spaces

Multivariate scaling methods and the reconstruction of social spaces

Author: Alice Barth

Publisher: Verlag Barbara Budrich

Published: 2023-10-02

Total Pages: 259

ISBN-13: 3847418564

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Der Sammelband vereint Beiträge von führenden Forscherinnen und Forschern im Bereich statistischer Methoden und deren Anwendung in den Sozialwissenschaften mit einem besonderen Fokus auf sozialen Räumen. Multivariate Skalierungsmethoden für kategoriale Daten, speziell Korrespondenzanalyse, werden verwendet um die wichtigsten Dimensionen aus komplexen Kreuztabellen mit vielen Variablen zu extrahieren und Zusammenhänge in den Daten bildlich darzustellen. In diesem Band werden statistische Weiterentwicklungen, grundsätzliche methodologische Überlegungen und empirische Anwendungen multivariater Analysemethoden diskutiert. Mehrere Anwendungsbeispiele thematisieren verschiedene Aspekte des Raumes und deren soziologische Bedeutung: die Rekonstruktion „sozialer Räume“ mit statistischen Methoden, die Illustration räumlicher Beziehungen zwischen Nähe, Distanz und Ungleichheit, aber auch konkrete Interaktionen in urbanen Räumen. Der Band erscheint zur Würdigung der wissenschaftlichen Leistungen von Prof. Jörg Blasius.


Book Synopsis Multivariate scaling methods and the reconstruction of social spaces by : Alice Barth

Download or read book Multivariate scaling methods and the reconstruction of social spaces written by Alice Barth and published by Verlag Barbara Budrich. This book was released on 2023-10-02 with total page 259 pages. Available in PDF, EPUB and Kindle. Book excerpt: Der Sammelband vereint Beiträge von führenden Forscherinnen und Forschern im Bereich statistischer Methoden und deren Anwendung in den Sozialwissenschaften mit einem besonderen Fokus auf sozialen Räumen. Multivariate Skalierungsmethoden für kategoriale Daten, speziell Korrespondenzanalyse, werden verwendet um die wichtigsten Dimensionen aus komplexen Kreuztabellen mit vielen Variablen zu extrahieren und Zusammenhänge in den Daten bildlich darzustellen. In diesem Band werden statistische Weiterentwicklungen, grundsätzliche methodologische Überlegungen und empirische Anwendungen multivariater Analysemethoden diskutiert. Mehrere Anwendungsbeispiele thematisieren verschiedene Aspekte des Raumes und deren soziologische Bedeutung: die Rekonstruktion „sozialer Räume“ mit statistischen Methoden, die Illustration räumlicher Beziehungen zwischen Nähe, Distanz und Ungleichheit, aber auch konkrete Interaktionen in urbanen Räumen. Der Band erscheint zur Würdigung der wissenschaftlichen Leistungen von Prof. Jörg Blasius.


The Class Structure of Capitalist Societies, Volume 2

The Class Structure of Capitalist Societies, Volume 2

Author: Will Atkinson

Publisher: Routledge

Published: 2021-11-30

Total Pages: 330

ISBN-13: 1000482618

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The second volume of The Class Structure of Capitalist Societies maps the distribution of social powers and associated properties and lifestyles in unparalleled detail by examining the results of a brand-new survey delivered in Sweden, Germany and the US. Continuing the cross-national investigation of the shape and effects of class systems across capitalist nations, the analyses in Volume 2 are embedded in a novel sociological theory of international relations, sustained reflections on the relationship between national standing and class structure and extensive reconstruction of the histories of class in each of the three nations studied. The ultimate conclusion, however, is that not only that the fundamental structure of class today the same across the three cases, for all their unique cultural and historical features, but their translation into differences of taste, practice and symbolic violence, always cross-cut by gender, follow highly familiar patterns too. This volume will appeal to scholars and advanced undergraduate and postgraduate students interested in sociology, politics and demography and is essential reading for all those interested in social class across the globe.


Book Synopsis The Class Structure of Capitalist Societies, Volume 2 by : Will Atkinson

Download or read book The Class Structure of Capitalist Societies, Volume 2 written by Will Atkinson and published by Routledge. This book was released on 2021-11-30 with total page 330 pages. Available in PDF, EPUB and Kindle. Book excerpt: The second volume of The Class Structure of Capitalist Societies maps the distribution of social powers and associated properties and lifestyles in unparalleled detail by examining the results of a brand-new survey delivered in Sweden, Germany and the US. Continuing the cross-national investigation of the shape and effects of class systems across capitalist nations, the analyses in Volume 2 are embedded in a novel sociological theory of international relations, sustained reflections on the relationship between national standing and class structure and extensive reconstruction of the histories of class in each of the three nations studied. The ultimate conclusion, however, is that not only that the fundamental structure of class today the same across the three cases, for all their unique cultural and historical features, but their translation into differences of taste, practice and symbolic violence, always cross-cut by gender, follow highly familiar patterns too. This volume will appeal to scholars and advanced undergraduate and postgraduate students interested in sociology, politics and demography and is essential reading for all those interested in social class across the globe.


The Class Structure of Capitalist Societies

The Class Structure of Capitalist Societies

Author: Will Atkinson

Publisher: Routledge

Published: 2020-06-11

Total Pages: 150

ISBN-13: 0429800878

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This first volume of The Class Structure of Capitalist Societies offers a bold and wide-ranging assessment of the shape and effects of class systems across a diverse range of capitalist nations. Plumbing a trove of data and deploying cutting-edge techniques, it carefully maps the distribution of the key sources of power and documents the major convergences and divergences between market societies old and new. Establishing that the multidimensional vision of class proposed decades ago by Pierre Bourdieu appears to hold good throughout Europe, parts of the wider Western world and Eastern Asia, the book goes on to examine a number of significant themes: the relationship between class and occupation; the intersection of class with gender, religion, geography and age; the correspondences between social position and political attitudes; self-positioning in the class structure; and the extent of belief in meritocracy. For all the striking cross-national commonalities, however, the book unearths consistent variations seemingly linked to distinct politico-economic regimes. This title will appeal to scholars and advanced undergraduate and postgraduate students interested in sociology, politics and demography, and is essential reading for all those interested in social class across the globe. Chapter 3 of this book is freely available as a downloadable Open Access PDF at http://www.taylorfrancis.com under a Creative Commons Attribution-Non Commercial-No Derivatives (CC-BY-NC-ND) 4.0 license.


Book Synopsis The Class Structure of Capitalist Societies by : Will Atkinson

Download or read book The Class Structure of Capitalist Societies written by Will Atkinson and published by Routledge. This book was released on 2020-06-11 with total page 150 pages. Available in PDF, EPUB and Kindle. Book excerpt: This first volume of The Class Structure of Capitalist Societies offers a bold and wide-ranging assessment of the shape and effects of class systems across a diverse range of capitalist nations. Plumbing a trove of data and deploying cutting-edge techniques, it carefully maps the distribution of the key sources of power and documents the major convergences and divergences between market societies old and new. Establishing that the multidimensional vision of class proposed decades ago by Pierre Bourdieu appears to hold good throughout Europe, parts of the wider Western world and Eastern Asia, the book goes on to examine a number of significant themes: the relationship between class and occupation; the intersection of class with gender, religion, geography and age; the correspondences between social position and political attitudes; self-positioning in the class structure; and the extent of belief in meritocracy. For all the striking cross-national commonalities, however, the book unearths consistent variations seemingly linked to distinct politico-economic regimes. This title will appeal to scholars and advanced undergraduate and postgraduate students interested in sociology, politics and demography, and is essential reading for all those interested in social class across the globe. Chapter 3 of this book is freely available as a downloadable Open Access PDF at http://www.taylorfrancis.com under a Creative Commons Attribution-Non Commercial-No Derivatives (CC-BY-NC-ND) 4.0 license.


Sampling in Combinatorial and Geometric Set Systems

Sampling in Combinatorial and Geometric Set Systems

Author: Nabil H. Mustafa

Publisher: American Mathematical Society

Published: 2022-01-14

Total Pages: 251

ISBN-13: 1470461560

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Understanding the behavior of basic sampling techniques and intrinsic geometric attributes of data is an invaluable skill that is in high demand for both graduate students and researchers in mathematics, machine learning, and theoretical computer science. The last ten years have seen significant progress in this area, with many open problems having been resolved during this time. These include optimal lower bounds for epsilon-nets for many geometric set systems, the use of shallow-cell complexity to unify proofs, simpler and more efficient algorithms, and the use of epsilon-approximations for construction of coresets, to name a few. This book presents a thorough treatment of these probabilistic, combinatorial, and geometric methods, as well as their combinatorial and algorithmic applications. It also revisits classical results, but with new and more elegant proofs. While mathematical maturity will certainly help in appreciating the ideas presented here, only a basic familiarity with discrete mathematics, probability, and combinatorics is required to understand the material.


Book Synopsis Sampling in Combinatorial and Geometric Set Systems by : Nabil H. Mustafa

Download or read book Sampling in Combinatorial and Geometric Set Systems written by Nabil H. Mustafa and published by American Mathematical Society. This book was released on 2022-01-14 with total page 251 pages. Available in PDF, EPUB and Kindle. Book excerpt: Understanding the behavior of basic sampling techniques and intrinsic geometric attributes of data is an invaluable skill that is in high demand for both graduate students and researchers in mathematics, machine learning, and theoretical computer science. The last ten years have seen significant progress in this area, with many open problems having been resolved during this time. These include optimal lower bounds for epsilon-nets for many geometric set systems, the use of shallow-cell complexity to unify proofs, simpler and more efficient algorithms, and the use of epsilon-approximations for construction of coresets, to name a few. This book presents a thorough treatment of these probabilistic, combinatorial, and geometric methods, as well as their combinatorial and algorithmic applications. It also revisits classical results, but with new and more elegant proofs. While mathematical maturity will certainly help in appreciating the ideas presented here, only a basic familiarity with discrete mathematics, probability, and combinatorics is required to understand the material.