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Exploratory multivariate analysis by example using R / François Husson, Sébastien Le and Jérôme Pagès.

By: Contributor(s): Material type: TextTextSeries: Computer Science and Data Analysis SeriesPublication details: Boca Raton: CRC, 2017Edition: 2nd edDescription: xiii, 248 pages, 24 cmISBN:
  • 9781138196346
Subject(s): DDC classification:
  • SA.07 23 H972
Contents:
Preface -- Principal Component Analysis (PCA) -- Correspondence Analysis (CA) -- Multiple Correspondence Analysis (MCA) --Clustering -- Visualisation -- Appendix
Summary: This edition focuses on four fundamental methods of multivariate exploratory data analysis that are most suitable for applications. It covers principal component analysis (PCA) when variables are quantitative, correspondence analysis (CA) and multiple correspondence analysis (MCA) when variables are categorical, and hierarchical cluster analysis. The authors take a geometric point of view that provides a unified vision for exploring multivariate data tables. Within this framework, they present the principles, indicators, and ways of representing and visualising objects that are common to the exploratory methods. The authors show how to use categorical variables in a PCA context in which variables are quantitative, how to handle more than two categorical variables in a CA context in which there are originally two variables, and how to add quantitative variables in an MCA context in which variables are categorical. They also illustrate the methods using examples from various fields, with related R code accessible in the FactoMineR package developed by the authors.
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Holdings
Item type Current library Call number Status Date due Barcode Item holds
Books ISI Library, Kolkata SA.07 H972 (Browse shelf(Opens below)) Checked out 18/09/2024 138477
Total holds: 0

Includes bibliographical references and index.

Preface -- Principal Component Analysis (PCA) -- Correspondence Analysis (CA) -- Multiple Correspondence Analysis (MCA) --Clustering -- Visualisation -- Appendix

This edition focuses on four fundamental methods of multivariate exploratory data analysis that are most suitable for applications. It covers principal component analysis (PCA) when variables are quantitative, correspondence analysis (CA) and multiple correspondence analysis (MCA) when variables are categorical, and hierarchical cluster analysis.
The authors take a geometric point of view that provides a unified vision for exploring multivariate data tables. Within this framework, they present the principles, indicators, and ways of representing and visualising objects that are common to the exploratory methods. The authors show how to use categorical variables in a PCA context in which variables are quantitative, how to handle more than two categorical variables in a CA context in which there are originally two variables, and how to add quantitative variables in an MCA context in which variables are categorical. They also illustrate the methods using examples from various fields, with related R code accessible in the FactoMineR package developed by the authors.

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