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Mathematical Tools for Applied Multivariate Analysis

Specificaties
Paperback, blz. | Engels
Elsevier Science | e druk, 1997
ISBN13: 9780121609559
Rubricering
Elsevier Science e druk, 1997 9780121609559
€ 80,14
Levertijd ongeveer 8 werkdagen

Samenvatting

This revised edition presents the relevant aspects of transformational geometry, matrix algebra, and calculus to those who may be lacking the necessary mathematical foundations of applied multivariate analysis. It brings up-to-date many definitions of mathematical concepts and their operations. It also clearly defines the relevance of the exercises to concerns within the business community and the social and behavioral sciences. Readers gain a technical background for tackling applications-oriented multivariate texts and receive a geometric perspective for understanding multivariate methods."Mathematical Tools for Applied Multivariate Analysis, Revised Edition illustrates major concepts in matrix algebra, linear structures, and eigenstructures geometrically, numerically, and algebraically. The authors emphasize the applications of these techniques by discussing potential solutions to problems outlined early in the book. They also present small numerical examples of the various concepts.

Specificaties

ISBN13:9780121609559
Taal:Engels
Bindwijze:Paperback
Hoofdrubriek:Diversen, Economie

Inhoudsopgave

The Nature of Multivariate Data Analysis.<br>Vector and Matrix Operations for Multivariate Analysis.<br>Vector and Matrix Concepts from a Geometric Viewpoint.<br>Linear Transformations from a Geometric Viewpoint.<br>Decomposition of Matrix Transformations: Eigenstructures and Quadratic Forms.<br>Applying the Tools to Multivariate Data.<br>Appendix A: Symbolic Differentiation and Optimization of Multivariable Functions. <br>Appendix B: Linear Equations and Generalized Inverses.<br>Answers to Numerical Problems.<br>References.<br>Index.
€ 80,14
Levertijd ongeveer 8 werkdagen

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        Mathematical Tools for Applied Multivariate Analysis