This is the first textbook that allows readers who may be unfamiliar with matrices to understand a variety of multivariate analysis procedures in matrix forms. By explaining which models underlie particular procedures and what objective function is optimized to fit the model to the data, it enables readers to rapidly comprehend multivariate data analysis. Arranged so that readers can intuitively grasp the purposes for which multivariate analysis procedures are used, the book also offers clear explanations of those purposes, with numerical examples preceding the mathematical descriptions.
Supporting the modern matrix formulations by highlighting singular value decomposition among theorems in matrix algebra, this book is useful for undergraduate students who have already learned introductory statistics, as well as for graduate students and researchers who are not familiar with matrix-intensive formulations of multivariate data analysis.
The book begins by explainingfundamental matrix operations and the matrix expressions of elementary statistics. Then, it offers an introduction to popular multivariate procedures, with each chapter featuring increasing advanced levels of matrix algebra.
Further the book includes in six chapters on advanced procedures, covering advanced matrix operations and recently proposed multivariate procedures, such as sparse estimation, together with a clear explication of the differences between principal components and factor analyses solutions. In a nutshell, this book allows readers to gain an understanding of the latest developments in multivariate data science.
Auflage
Sprache
Verlagsort
Zielgruppe
Editions-Typ
Illustrationen
13
81 s/w Abbildungen, 13 farbige Abbildungen
XIX, 457 p. 94 illus., 13 illus. in color.
Maße
Höhe: 241 mm
Breite: 160 mm
Dicke: 32 mm
Gewicht
ISBN-13
978-981-15-4102-5 (9789811541025)
DOI
10.1007/978-981-15-4103-2
Schweitzer Klassifikation
Kohei Adachi, Graduate School of Human Sciences, Osaka University