Multivariate Analysis for the Behavioral Sciences, Second Edition is designed to show how a variety of statistical methods can be used to analyse data collected by psychologists and other behavioral scientists. Assuming some familiarity with introductory statistics, the book begins by briefly describing a variety of study designs used in the behavioral sciences, and the concept of models for data analysis. The contentious issues of p-values and confidence intervals are also discussed in the introductory chapter.
After describing graphical methods, the book covers regression methods, including simple linear regression, multiple regression, locally weighted regression, generalized linear models, logistic regression, and survival analysis. There are further chapters covering longitudinal data and missing values, before the last seven chapters deal with multivariate analysis, including principal components analysis, factor analysis, multidimensional scaling, correspondence analysis, and cluster analysis.
Features:
Presents an accessible introduction to multivariate analysis for behavioral scientists
Contains a large number of real data sets, including cognitive behavioral therapy, crime rates, and drug usage
Includes nearly 100 exercises for course use or self-study
Supplemented by a GitHub repository with all datasets and R code for the examples and exercises
Theoretical details are separated from the main body of the text
Suitable for anyone working in the behavioral sciences with a basic grasp of statistics
Author(s): Kimmo Vehkalahti, Brian S. Everitt
Series: Statistics for the Social and Behavioral Sciences
Edition: 2nd
Publisher: CRC Press
Year: 2019
Language: English
Commentary: Watermark removed
Pages: 439
Tags: Statistics, Behavioral Sciences, R
Data, Measurement, and Models
Looking at Data
Simple Linear and Locally Weighted Regression
Multiple Linear Regression
Generalized Linear Models
Applying Logistic Regression
Survival Analysis
Analysis of Longitudinal Data I: Graphical Displays and Summary Measure Approach
Analysis of Longitudinal Data II: Linear Mixed Effects Models for Normal Response Variables
Analysis of Longitudinal Data III: Non-Normal Responses
Missing Values
Multivariate Data and Multivariate Analysis
Principal Components Analysis
Multidimensional Scaling and Correspondence Analysis
Exploratory Factor Analysis
Confirmatory Factor Analysis and Structural Equation Models
Cluster Analysis
Grouped Multivariate Data