ABSTRACT

Data Analysis: A Model Comparison Approach to Regression, ANOVA, and Beyond is an integrated treatment of data analysis for the social and behavioral sciences. It covers all of the statistical models normally used in such analyses, such as multiple regression and analysis of variance, but it does so in an integrated manner that relies on the comparison of models of data estimated under the rubric of the general linear model.  

Data Analysis also describes how the model comparison approach and uniform framework can be applied to models that include product predictors (i.e., interactions and nonlinear effects) and to observations that are nonindependent. Indeed, the analysis of nonindependent observations is treated in some detail, including models of nonindependent data with continuously varying predictors as well as standard repeated measures analysis of variance. This approach also provides an integrated introduction to multilevel or hierarchical linear models and logistic regression. Finally, Data Analysis provides guidance for the treatment of outliers and other problematic aspects of data analysis. It is intended for advanced undergraduate and graduate level courses in data analysis and offers an integrated approach that is very accessible and easy to teach.  

Highlights of the third edition include:

  • a new chapter on logistic regression;
  • expanded treatment of mixed models for data with multiple random factors;
  • updated examples;
  • an enhanced website with PowerPoint presentations and other tools that demonstrate the concepts in the book; exercises for each chapter that highlight research findings from the literature; data sets, R code, and SAS output for all analyses; additional examples and problem sets; and test questions.

chapter 1|9 pages

Introduction to Data Analysis

chapter 2|15 pages

Simple Models

Definitions of Error and Parameter Estimates

chapter 3|18 pages

Simple Models

Models of Error and Sampling Distributions

chapter 4|29 pages

Simple Models

Statistical Inferences about Parameter Values

chapter 5|31 pages

Simple Regression

Estimating Models with a Single Continuous Predictor

chapter 6|32 pages

Multiple Regression

Models with Multiple Continuous Predictors

chapter 7|33 pages

Moderated and Nonlinear Regression Models

chapter 8|37 pages

One-Way ANOVA

Models with a Single Categorical Predictor

chapter 9|24 pages

Factorial ANOVA

Models with Multiple Categorical Predictors and Product Terms

chapter 10|31 pages

ANCOVA

Models with Continuous and Categorical Predictors

chapter 11|32 pages

Repeated-Measures ANOVA

Models with Nonindependent Errors

chapter 12|22 pages

Incorporating Continuous Predictors with Nonindependent Data

Towards Mixed Models

chapter 13|25 pages

Outliers and Ill-Mannered Error

chapter 14|15 pages

Logistic Regression

Dependent Categorical Variables