ABSTRACT

This text shows how to use multivariate analysis to extract useful information from multivariate data and understand the structure of random phenomena. Along with the basic concepts of various procedures in traditional multivariate analysis, the book covers nonlinear techniques for clarifying phenomena behind observed multivariate data. It primarily focuses on regression modeling, classification, discrimination, dimension reduction, and clustering. Many examples and figures throughout facilitate a deep understanding of the multivariate analysis techniques, including how to select the optimal model.

chapter Chapter 1|13 pages

Introduction

chapter Chapter 2|39 pages

Linear Regression Models

chapter Chapter 3|32 pages

Nonlinear Regression Models

chapter Chapter 4|18 pages

Logistic Regression Models

chapter Chapter 5|32 pages

Model Evaluation and Selection

chapter Chapter 6|36 pages

Discriminant Analysis

chapter Chapter 7|19 pages

Bayesian Classification

chapter Chapter 8|31 pages

Support Vector Machines

chapter Chapter 9|33 pages

Principal Component Analysis

chapter Chapter 10|23 pages

Clustering