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  • Johnson, Richard Arnold; Wichern, Dean W.

    Edité par Pearson Education and China Statistics Press, Upper Saddle River, N.J., 2003

    ISBN 10 : 750374099XISBN 13 : 9787503740992

    Vendeur : Alien Bindings, BALTIMORE, MD, Etats-Unis

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    Softcover. Etat : Very Good. No Jacket. 5th Edition. International softcover 5th edition published in China by Pearson Education in conjunction with China Statistics Press. Includes a tested CD. The covers look different and the paper is of a lighter weight; otherwise, everything is the same as the American 5th edition. The book is in Near Fine or VG+ condition. The covers are in great shape with only light shelf wear. The binding is square and tight. An organization stamp is neatly marked out on the first page. The interior pages are clean and unmarked. The book will be carefully packaged for shipment for protection from the elements. USPS electronic tracking number issued free of charge. This market-leading book offers a readable introduction to the statistical analysis of multivariate observations. Its overarching goal is to provide readers with the knowledge necessary to make proper interpretations and select appropriate techniques for analyzing multivariate data. Chapter topics include aspects of multivariate analysis, matrix algebra and random vectors, sample geometry and random sampling, the multivariate normal distribution, inferences about a mean vector, comparisons of several multivariate means, multivariate linear regression models, principal components, factor analysis and inference for structured covariance matrices, canonical correlation analysis, and discrimination and classification. For experimental scientists in a variety of disciplines.