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Multiple Correspondence Analysis and Related Methods (Chapman & Hall CRC Statistics in the Social and Behavioral Scie)

✍ Scribed by Michael Greenacre, Jorg Blasius


Publisher
Chapman and Hall/CRC
Year
2006
Tongue
English
Leaves
607
Edition
1
Category
Library

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✦ Synopsis


As a generalization of simple correspondence analysis, multiple correspondence analysis (MCA) is a powerful technique for handling larger, more complex datasets, including the high-dimensional categorical data often encountered in the social sciences, marketing, health economics, and biomedical research. Until now, however, the literature on the subject has been scattered, leaving many in these fields no comprehensive resource from which to learn its theory, applications, and implementation.Multiple Correspondence Analysis and Related Methods gives a state-of-the-art description of this new field in an accessible, self-contained, textbook format. Explaining the methodology step-by-step, it offers an exhaustive survey of the different approaches taken by researchers from different statistical "schools" and explores a wide variety of application areas. Each chapter includes empirical examples that provide a practical understanding of the method and its interpretation, and most chapters end with a "Software Note" that discusses software and computational aspects. An appendix at the end of the book gives further computing details along with code written in the R language for performing MCA and related techniques. The code and the datasets used in the book are available for download from a supporting Web page.Providing a unique, multidisciplinary perspective, experts in MCA from both statistics and the social sciences contributed chapters to the book. The editors unified the notation and coordinated and cross-referenced the theory across all of the chapters, making the book read seamlessly. Practical, accessible, and thorough, Multiple Correspondence Analysis and Related Methods brings the theory and applications of MCA under one cover and provides a valuable addition to your statistical toolbox.

✦ Table of Contents


Front Cover......Page 1
Preface......Page 8
About the authors......Page 12
Table of Contents......Page 22
1. Correspondence Analysis and Related Methods in Practice......Page 28
2. From Simple to Multiple Correspondence Analysis......Page 66
3. Divided by a Common Language: Analyzing and Visualizing Two-Way Arrays......Page 102
4. Nonlinear Principal Component Analysis and Related Techniques......Page 132
5. The Geometric Analysis of Structured Individuals Γ— Variables Tables......Page 162
6. Correlational Structure of Multiple-Choice Data as Viewed from Dual Scaling......Page 186
7. Validation Techniques in Multiple Correspondence Analysis......Page 204
8. Multiple Correspondence Analysis of Subsets of Response Categories......Page 222
9. Scaling Unidimensional Models with Multiple Correspondence Analysis......Page 244
10. The Unfolding Fallacy Unveiled: Visualizing Structures of Dichotomous Unidimensional Item–Response–Theory Data by Multiple Correspondence Analysis......Page 262
11. Regularized Multiple Correspondence Analysis......Page 284
12. The Evaluation of β€œDon’t Know” Responses by Generalized Canonical Analysis......Page 308
13. Multiple Factor Analysis for Contingency Tables......Page 324
14. Simultaneous Analysis: A Joint Study of Several Contingency Tables with Different Margins......Page 352
15. Multiple Factor Analysis of Mixed Tables of Metric and Categorical Data......Page 376
16. Correspondence Analysis and Classification......Page 396
17. Multiblock Canonical Correlation Analysis for Categorical Variables: Application to Epidemiological Data......Page 418
18. Projection-Pursuit Approach for Categorical Data......Page 430
19. Correspondence Analysis and Categorical Conjoint Measurement......Page 446
20. A Three-Step Approach to Assessing the Behavior of Survey Items in Cross-National Research......Page 458
21. Additive and Multiplicative Models for Three-Way Contingency Tables: Darroch (1974) Revisited......Page 480
22. A New Model for Visualizing Interactions in Analysis of Variance......Page 512
23. Logistic Biplots......Page 528
Appendix......Page 548
References......Page 578
Index......Page 600


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