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
Matrix-Based Introduction to Multivariate Data Analysis
β Scribed by Kohei Adachi
- Publisher
- Springer
- Year
- 2016
- Tongue
- English
- Leaves
- 296
- Edition
- 1st ed.
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
β¦ Table of Contents
Front Matter....Pages i-xi
Front Matter....Pages 1-1
Elementary Matrix Operations....Pages 3-16
Intravariable Statistics....Pages 17-28
Inter-variable Statistics....Pages 29-43
Front Matter....Pages 45-45
Regression Analysis....Pages 47-62
Principal Component Analysis (Part 1)....Pages 63-77
Principal Component Analysis (Part 2)....Pages 79-91
Cluster Analysis....Pages 93-105
Front Matter....Pages 107-107
Maximum Likelihood and Multivariate Normal Distribution....Pages 109-126
Path Analysis....Pages 127-144
Confirmatory Factor Analysis....Pages 145-159
Structural Equation Modeling....Pages 161-173
Exploratory Factor Analysis....Pages 175-189
Front Matter....Pages 191-191
Rotation Techniques....Pages 193-205
Canonical Correlation and Multiple Correspondence Analyses....Pages 207-224
Discriminant Analysis....Pages 225-241
Multidimensional Scaling....Pages 243-253
Back Matter....Pages 255-301
β¦ Subjects
Multivariate analysis;Matrices
π SIMILAR VOLUMES
<p>This book enables readers who may not be familiar with matrices to understand a variety of multivariate analysis procedures in matrix forms. Another feature of the book is that it emphasizes what model underlies a procedure and what objective function is optimized for fitting the model to data. T
This graduate-level textbook aims to give a unified presentation and solution of several commonly used techniques for multivariate data analysis (MDA). Unlike similar texts, it treats the MDA problems as optimization problems on matrix manifolds defined by the MDA model parameters, allowing them to
This graduate-level textbook aims to give a unified presentation and solution of several commonly used techniques for multivariate data analysis (MDA). Unlike similar texts, it treats the MDA problems as optimization problems on matrix manifolds defined by the MDA model parameters, allowing them to
<p>This book provides an introduction to the analysis of multivariate data. It should be suitable for statisticians and other research workers who are familiar with basic probability theory and elementary inference, and also have a basic grounding in matrix algebra. The book should also be suitable