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Modern Multidimensional Scaling : Theory and Applications / by Ingwer Borg, Patrick J. F. Groenen
(Springer Series in Statistics)

データ種別 電子ブック
Second Edition
出版者 New York, NY : Springer New York
出版年 2005
本文言語 英語
大きさ XXII, 614 p : online resource

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URL 電子ブック


EB0112088

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内容注記 Fundamentals of MDS
The Four Purposes of Multidimensional Scaling
Constructing MDS Representations
MDS Models and Measures of Fit
Three Applications of MDS
MDS and Facet Theory
How to Obtain Proximities
MDS Models and Solving MDS Problems
Matrix Algebra for MDS
A Majorization Algorithm for Solving MDS
Metric and Nonmetric MDS
Confirmatory MDS
MDS Fit Measures, Their Relations, and Some Algorithms
Classical Scaling
Special Solutions, Degeneracies, and Local Minima
Unfolding
Unfolding
Avoiding Trivial Solutions in Unfolding
Special Unfolding Models
MDS Geometry as a Substantive Model
MDS as a Psychological Model
Scalar Products and Euclidean Distances
Euclidean Embeddings
MDS and Related Methods
Procrustes Procedures
Three-Way Procrustean Models
Three-Way MDS Models
Modeling Asymmetric Data
Methods Related to MDS
一般注記 The book provides a comprehensive treatment of multidimensional scaling (MDS), a family of statistical techniques for analyzing the structure of (dis)similarity data. Such data are widespread, including, for example, intercorrelations of survey items, direct ratings on the similarity on choice objects, or trade indices for a set of countries. MDS represents the data as distances among points in a geometric space of low dimensionality. This map can help to see patterns in the data that are not obvious from the data matrices. MDS is also used as a psychological model for judgments of similarity and preference. This book may be used as an introduction to MDS for students in psychology, sociology, and marketing. The prerequisite is an elementary background in statistics. The book is also well suited for a variety of advanced courses on MDS topics. All the mathematics required for more advanced topics is developed systematically. This second edition is not only a complete overhaul of its predecessor, but also adds some 140 pages of new material. Many chapters are revised or have sections reflecting new insights and developments in MDS. There are two new chapters, one on asymmetric models and the other on unfolding. There are also numerous exercises that help the reader to practice what he or she has learned, and to delve deeper into the models and its intricacies. These exercises make it easier to use this edition in a course. All data sets used in the book can be downloaded from the web. The appendix on computer programs has also been updated and enlarged to reflect the state of the art. Ingwer Borg is Scientific Director at the Center for Survey Methodology (ZUMA) in Mannheim, Germany, and Professor of Psychology at the University of Giessen, Germany. He has authored or edited 14 books and numerous articles on data analysis, survey research, theory construction, and various substantive topics of psychology. He also served as president of several professional organizations. Patrick Groenen is Professor in Statistics
at the Econometric Institute of the Erasmus University Rotterdam, the Netherlands. Before, he was assistant professor at the Department of Data Theory at Leiden University in the Netherlands. He is an associate editor for three international journals. He has published on MDS, unfolding, optimization, multivariate analysis, and data analysis in various top journals
著者標目 *Borg, Ingwer author
Groenen, Patrick J. F. author
SpringerLink (Online service)
件 名 LCSH:Statistics
LCSH:Marketing
LCSH:Pattern recognition
FREE:Statistics
FREE:Statistics for Social Science, Behavorial Science, Education, Public Policy, and Law
FREE:Marketing
FREE:Pattern Recognition
FREE:Statistics and Computing/Statistics Programs
分 類 DC23:519.5
巻冊次 ISBN:9780387289816 REFWLINK
ISBN 9780387289816
URL http://dx.doi.org/10.1007/0-387-28981-X
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