Combinatorial Inference in Geometric Data Analysis

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Last edited by MARC Bot
December 16, 2022 | History

Combinatorial Inference in Geometric Data Analysis

Second edition
  • 1 Currently reading

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.

Publish Date
Language
English
Pages
268

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Edition Availability
Cover of: Combinatorial Inference in Geometric Data Analysis
Combinatorial Inference in Geometric Data Analysis
2021, Taylor & Francis Group
in English
Cover of: Combinatorial Inference in Geometric Data Analysis
Combinatorial Inference in Geometric Data Analysis
2019, Taylor & Francis Group
in English
Cover of: Combinatorial Inference in Geometric Data Analysis
Combinatorial Inference in Geometric Data Analysis
2019, Taylor & Francis Group
in English
Cover of: Combinatorial Inference in Geometric Data Analysis
Combinatorial Inference in Geometric Data Analysis
February 22, 2019, Chapman and Hall/CRC, Taylor & Francis Group
Hardcover in English - Second edition
Cover of: Combinatorial Inference in Geometric Data Analysis
Combinatorial Inference in Geometric Data Analysis
2019, Taylor & Francis Group
in English

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Book Details


Edition Notes

First ed. was published in 2017.
Includes bibliographical references (pages 245-249) and indexes.

Published in
Boca Raton, Florida, USA
Series
Chapman & Hall/CRC Computer Science & Data Analysis
Copyright Date
2019

Classifications

Dewey Decimal Class
515/.9
Library of Congress
QA360 .L37 2019, QA360.L37 2019, QA360

Contributors

Author
Brigitte Le Roux
Co-Author
Solène Bienaise
Co-Author
Jean-Luc Durand

The Physical Object

Format
Hardcover
Pagination
xii, 256 pages : illustrations ; 25 cm.
Number of pages
268
Dimensions
6 x 1 x 9 inches
Weight
1 pounds

ID Numbers

Open Library
OL27327204M
ISBN 10
1498781616, 1315155281
ISBN 13
9781498781619, 9781315155289
LCCN
2018052973, 2020693417
OCLC/WorldCat
1089446088

Work Description

This book covers methods for statistical inference in geometric data analysis based on a combinatorial framework. These methods enable the researcher to answer certain questions that cannot be answered by statistical models due to the underlying assumptions. It presents all the methodology, together with detailed case studies to illustrate the potential applications. R code is provided in the book for implementation of the methodology.

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.

Links outside Open Library

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History

Download catalog record: RDF / JSON
December 16, 2022 Edited by MARC Bot import existing book
September 21, 2021 Edited by ImportBot import existing book
October 2, 2019 Edited by Kaustubh Chakraborty Added new cover
October 2, 2019 Edited by Kaustubh Chakraborty Added new book
October 2, 2019 Created by Kaustubh Chakraborty Added new book.