Multiple correspondence analysis for the social sciences
Author(s)
Bibliographic Information
Multiple correspondence analysis for the social sciences
Routledge, 2019
- : pbk.
Available at 3 libraries
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  Shimane
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  Hiroshima
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  Fukuoka
  Saga
  Nagasaki
  Kumamoto
  Oita
  Miyazaki
  Kagoshima
  Okinawa
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Note
Includes bibliographical references (p. [113]-116) and index
Description and Table of Contents
Description
Multiple correspondence analysis (MCA) is a statistical technique that first and foremost has become known through the work of the late Pierre Bourdieu (1930-2002). This book will introduce readers to the fundamental properties, procedures and rules of interpretation of the most commonly used forms of correspondence analysis. The book is written as a non-technical introduction, intended for the advanced undergraduate level and onwards.
MCA represents and models data sets as clouds of points in a multidimensional Euclidean space. The interpretation of the data is based on these clouds of points. In seven chapters, this non-technical book will provide the reader with a comprehensive introduction and the needed knowledge to do analyses on his/her own: CA, MCA, specific MCA, the integration of MCA and variance analysis, of MCA and ascending hierarchical cluster analysis and class-specific MCA on subgroups. Special attention will be given to the construction of social spaces, to the construction of typologies and to group internal oppositions.
This is a book on data analysis for the social sciences rather than a book on statistics. The main emphasis is on how to apply MCA to the analysis of practical research questions. It does not require a solid understanding of statistics and/or mathematics, and provides the reader with the needed knowledge to do analyses on his/her own.
Table of Contents
Preface 1. Geometric Data Analysis 2. Correspondence Analysis 3. Multiple Correspondence Analysis 4. Passive and Supplementary Points, Supplementary Variables and Structured Data Analysis 5. MCA and Ascending Hierarchical Cluster Analysis 6. Constructing Spaces 7. Analyzing Sub-Groups. Class Specific MCA Appendix: Softwares For Doing MCA
by "Nielsen BookData"