Multivariate analysis: methods and applications

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Wiley, Aug 22, 1984 - Business & Economics - 587 pages
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This is one of the best books on Multivariate Statistics thta I have ever read. I strongly recomend it to any scientist interested in multivariate statistis.

Contents

SELECTED ASPECTS OF MULTIVARIATE ANALYSIS
1
PRINCIPAL COMPONENTS ANALYSIS
23
FACTOR ANALYSIS
53
Copyright

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About the author (1984)

About the authors William R. Dillon is Professor of Marketing at the University of Massachusetts. Dr. Dillon is the co-author of Discrete Discriminant Analysis and is on the editorial boards of the Journal of Business Research and Journal of Marketing Research. Dr. Dillon earned his PhD in marketing and quantitative methods at the City University of New York. Matthew Goldstein is President of the Research Foundation of the City University of New York and Professor of Statistics at Baruch College, City University of New York. He is a co-author of Discrete Discriminant Analysis and intermediate Statistical Methods. Dr Goldstein has served as president of the New York Area Chapter of the American Statistical Association. He earned his PhD in statistics at the University of Connecticut.