Preface
 
About the Authors
 
PART I: FUNDAMENTALS OF MULTIVARIATE DESIGN
 
Chapter 1: An Introduction to Multivariate Design
                              1.1 The Use of Multivariate Designs
 
 
                              1.2 The Definition of the Multivariate Domain
 
 
                              1.3 The Importance of Multivariate Designs
 
 
                              1.4 The General Form of a Variate
 
 
                              1.5 The Type of Variables Combined to Form a Variate
 
 
                              1.6 The General Organization of the Book
 
 
 
Chapter 2: Some Fundamental Research Design Concepts
                              2.1 Populations and Samples
 
 
                              2.2 Variables and Scales of Measurement
 
 
                              2.3 Independent Variables, Dependent Variables, and Covariates
 
 
                              2.4 Between Subjects and Within Subjects Independent Variables
 
 
                              2.5 Latent Variables and Measured Variables
 
 
                              2.6 Endogenous and Exogenous Variables
 
 
                              2.7 Statistical Significance
 
 
 
Chapter 3A: Data Screening
                              3A.3 Patterns of Missing Values
 
 
                              3A.4 Overview of Methods of Handling Missing Data
 
 
                              3A.5 Deletion Methods of Handling Missing Data
 
 
                              3A.6 Single Imputation Methods of Handling Missing Data
 
 
                              3A.7 Modern Imputation Methods of Handling Missing Data
 
 
                              3A.8 Recommendations for Handling Missing Data
 
 
                              3A.10 Using Descriptive Statistics in Data Screening
 
 
                              3A.11 Using Pictorial Representations in Data Screening
 
 
                              3A.12 Multivariate Statistical Assumptions Underlying the General Linear Model
 
 
                              3A.13 Data Transformations
 
 
                              3A.14 Recommended Readings
 
 
 
Chapter 3B: Data Screening Using IBM SPSS
                              3B.1 The Look of IBM SPSS
 
 
                              3B.2 Data Cleaning: All Variables
 
 
                              3B.3 Screening Quantitative Variables
 
 
                              3B.4 Missing Values: Overview
 
 
                              3B.5 Missing Value Analysis
 
 
                              3B.7 Mean Substitution as a Single Imputation Approach
 
 
                              3B.11 Multivariate Outliers
 
 
                              3B.12 Screening Within Levels of Categorical Variables
 
 
                              3B.13 Reporting the Data Screening Results
 
 
 
PART II: BASIC AND ADVANCED REGRESSION ANALYSIS
 
Chapter 4A: Bivariate Correlation and Simple Linear Regression
                              4A.1 The Concept of Correlation
 
 
                              4A.2 Different Types of Relationships
 
 
                              4A.3 Statistical Significance of the Correlation Coefficient
 
 
                              4A.4 Strength of Relationship
 
 
                              4A.5 Pearson Correlation Using a Quantitative Variable and a Dichotomous Nominal Variable
 
 
                              4A.6 Simple Linear Regression
 
 
                              4A.7 Statistical Error in Prediction: Why Bother With Regression?
 
 
                              4A.8 How Simple Linear Regression Is Used
 
 
                              4A.9 Factors Affecting the Computed Pearson r and Regression Coefficients
 
 
                              4A.10 Recommended Readings
 
 
 
Chapter 4B: Bivariate Correlation and Simple Linear Regression Using IBM SPSS
                              4B.1 Bivariate Correlation: Analysis Setup
 
 
                              4B.2 Simple Linear Regression
 
 
                              4B.3 Reporting Simple Linear Regression Results
 
 
 
Chapter 5A: Multiple Regression Analysis
                              5A.1 General Considerations
 
 
                              5A.2 Statistical Regression Methods
 
 
                              5A.3 The Two Classes of Variables in a Multiple Regression Analysis
 
 
                              5A.4 Multiple Regression Research
 
 
                              5A.5 The Regression Equations
 
 
                              5A.6 The Variate in Multiple Regression
 
 
                              5A.7 The Standard (Simultaneous) Regression Method
 
 
                              5A.9 The Squared Multiple Correlation
 
 
                              5A.10 The Squared Semipartial Correlation
 
 
                              5A.11 Structure Coefficients
 
 
                              5A.12 Statistical Summary of the Regression Solution
 
 
                              5A.13 Evaluating the Overall Model
 
 
                              5A.14 Evaluating the Individual Predictor Results
 
 
                              5A.15 Step Methods of Building the Model
 
 
                              5A.17 The Backward Method
 
 
                              5A.18 Backward Versus Forward Solutions
 
 
                              5A.19 The Stepwise Method
 
 
                              5A.20 Evaluation of the Statistical Methods
 
 
                              5A.21 Collinearity and Multicollinearity
 
 
                              5A.22 Recommended Readings
 
 
 
Chapter 5B: Multiple Regression Analysis Using IBM SPSS
                              5B.1 Standard Multiple Regression
 
 
                              5B.2 Stepwise Multiple Regression
 
 
 
Chapter 6A: Beyond Statistical Regression
                              6A.1 A Larger World of Regression
 
 
                              6A.2 Hierarchical Linear Regression
 
 
                              6A.3 Suppressor Variables
 
 
                              6A.4 Linear and Nonlinear Regression
 
 
                              6A.5 Dummy and Effect Coding
 
 
                              6A.6 Moderator Variables and Interactions
 
 
                              6A.7 Simple Mediation: A Minimal Path Analysis
 
 
                              6A.8 Recommended Readings
 
 
 
Chapter 6B: Beyond Statistical Regression Using IBM SPSS
                              6B.1 Hierarchical Linear Regression
 
 
                              6B.2 Polynomial Regression
 
 
                              6B.3 Dummy and Effect Coding
 
 
                              6B.4 Interaction Effects of Quantitative Variables in Regression
 
 
 
Chapter 7A: Canonical Correlation Analysis
                              7A.2 Canonical Functions or Roots
 
 
                              7A.3 The Index of Shared Variance
 
 
                              7A.4 The Dynamics of Extracting Canonical Functions
 
 
                              7A.5 Accounting for Variance: Eigenvalues and Theta Values
 
 
                              7A.6 The Multivariate Tests of Statistical Significance
 
 
                              7A.7 Specifying the Amount of Variance Explained in Canonical Correlation Analysis
 
 
                              7A.8 Coefficients Associated With the Canonical Functions
 
 
                              7A.9 Interpreting the Canonical Functions
 
 
                              7A.10 Recommended Readings
 
 
 
Chapter 7B: Canonical Correlation Analysis Using IBM SPSS
                              7B.1 Canonical Correlation: Analysis Setup
 
 
                              7B.2 Canonical Correlation: Overview of Output
 
 
                              7B.3 Canonical Correlation: Multivariate Tests of Significance
 
 
                              7B.4 Canonical Correlation: Eigenvalues and Canonical Correlations
 
 
                              7B.5 Canonical Correlation: Dimension Reduction Analysis
 
 
                              7B.6 Canonical Correlation: How Many Functions Should Be Interpreted?
 
 
                              7B.7 Canonical Correlation: The Coefficients in the Output
 
 
                              7B.8 Canonical Correlation: Interpreting the Dependent Variates
 
 
                              7B.9 Canonical Correlation: Interpreting the Predictor Variates
 
 
                              7B.10 Canonical Correlation: Interpreting the Canonical Functions
 
 
                              7B.11 Reporting of the Canonical Correlation Analysis Results
 
 
 
Chapter 8A: Multilevel Modeling
                              8A.1 The Name of the Procedure
 
 
                              8A.2 The Rise of Multilevel Modeling
 
 
                              8A.3 The Defining Feature of Multilevel Modeling: Hierarchically Structured Data
 
 
                              8A.4 Nesting and the Independence Assumption
 
 
                              8A.5 The Intraclass Correlation as an Index of Clustering
 
 
                              8A.6 Consequences of Violating the Independence Assumption
 
 
                              8A.7 Some Ways in Which Level 2 Groups Can Differ
 
 
                              8A.8 The Random Coefficient Regression Model
 
 
                              8A.9 Centering the Variables
 
 
                              8A.10 The Process of Building the Multilevel Model
 
 
                              8A.11 Recommended Readings
 
 
 
Chapter 8B: Multilevel Modeling Using IBM SPSS
                              8B.2 Assessing the Unconditional Model
 
 
                              8B.3 Centering the Covariates
 
 
                              8B.4 Building the Multilevel Models: Overview
 
 
                              8B.5 Building the First Model
 
 
                              8B.6 Building the Second Model
 
 
                              8B.7 Building the Third Model
 
 
                              8B.8 Building the Fourth Model
 
 
                              8B.9 Reporting the Multilevel Modeling Results
 
 
 
Chapter 9A: Binary and Multinomial Logistic Regression and ROC Analysis
                              9A.2 The Variables in Logistic Regression Analysis
 
 
                              9A.3 Assumptions of Logistic Regression
 
 
                              9A.4 Coding of the Binary Variables in Logistic Regression
 
 
                              9A.5 The Shape of the Logistic Regression Function
 
 
                              9A.6 Probability, Odds, and Odds Ratios
 
 
                              9A.7 The Logistic Regression Model
 
 
                              9A.8 Interpreting Logistic Regression Results in Simpler Language
 
 
                              9A.9 Binary Logistic Regression With a Single Binary Predictor
 
 
                              9A.10 Binary Logistic Regression With a Single Quantitative Predictor
 
 
                              9A.11 Binary Logistic Regression With a Categorical and a Quantitative Predictor
 
 
                              9A.12 Evaluating the Logistic Model
 
 
                              9A.13 Strategies for Building the Logistic Regression Model
 
 
                              9A.15 Recommended Readings
 
 
 
Chapter 9B: Binary and Multinomial Logistic Regression and ROC Analysis Using IBM SPSS
                              9B.1 Binary Logistic Regression
 
 
                              9B.3 Multinomial Logistic Regression
 
 
 
PART III: STRUCTURAL RELATIONSHIPS OF MEASURED AND LATENT VARIABLES
 
Chapter 10A: Principal Components Analysis and Exploratory Factor Analysis
                              10A.1 Orientation and Terminology
 
 
                              10A.2 Origins of Factor Analysis
 
 
                              10A.3 How Factor Analysis Is Used in Psychological Research
 
 
                              10A.4 The General Organization of This Chapter
 
 
                              10A.5 Where the Analysis Begins: The Correlation Matrix
 
 
                              10A.6 Acquiring Perspective on Factor Analysis
 
 
                              10A.7 Important Distinctions Within Our Generic Label of Factor Analysis
 
 
                              10A.8 The First Phase: Component Extraction
 
 
                              10A.9 Distances of Variables From a Component
 
 
                              10A.10 Principal Components Analysis Versus Factor Analysis
 
 
                              10A.11 Different Extraction Methods
 
 
                              10A.12 Recommendations Concerning Extraction
 
 
                              10A.13 The Rotation Process
 
 
                              10A.14 Orthogonal Factor Rotation Methods
 
 
                              10A.15 Oblique Factor Rotation
 
 
                              10A.16 Choosing Between Orthogonal and Oblique Rotation Strategies
 
 
                              10A.17 The Factor Analysis Output
 
 
                              10A.18 Interpreting Factors Based on the Rotated Matrices
 
 
                              10A.19 Selecting the Factor Solution
 
 
                              10A.20 Sample Size Issues
 
 
                              10A.21 Building Reliable Subscales
 
 
                              10A.22 Recommended Readings
 
 
 
Chapter 10B: Principal Components Analysis and Exploratory Factor Analysis Using IBM SPSS
                              10B.2 Preliminary Principal Components Analysis
 
 
                              10B.3 Principal Components Analysis With a Promax Rotation: Two-Component Solution
 
 
                              10B.4 ULS Analysis With a Promax Rotation: Two-Factor Solution
 
 
                              10B.5 Wrap-Up of the Two-Factor Solution
 
 
                              10B.6 Looking for Six Dimensions
 
 
                              10B.7 Principal Components Analysis With a Promax Rotation: Six-Component Solution
 
 
                              10B.8 ULS Analysis With a Promax Rotation: Six-Component Solution
 
 
                              10B.9 Principal Axis Factor Analysis With a Promax Rotation: Six-Component Solution
 
 
                              10B.10 Wrap-Up of the Six-Factor Solution
 
 
                              10B.11 Assessing Reliability: Our General Strategy
 
 
                              10B.12 Assessing Reliability: The Global Domains
 
 
                              10B.13 Assessing Reliability: The Six Item Sets Based on the ULS/Promax Structure
 
 
                              10B.14 Computing Scales Based on the ULS Promax Structure
 
 
                              10B.15 Using the Computed Variables in Further Analyses
 
 
                              10B.16 Reporting the Exploratory Factor Analysis Results
 
 
 
Chapter 11A: Confirmatory Factor Analysis
                              11A.2 The General Form of a Confirmatory Model
 
 
                              11A.3 The Difference Between Latent and Measured Variables
 
 
                              11A.4 Contrasting Principal Components Analysis and Exploratory Factor Analysis With Confirmatory Factor Analysis
 
 
                              11A.5 Confirmatory Factor Analysis Is Theory Based
 
 
                              11A.6 The Logic of Performing a Confirmatory Factor Analysis
 
 
                              11A.7 Model Specification
 
 
                              11A.8 Model Identification
 
 
                              11A.10 Model Evaluation Overview
 
 
                              11A.11 Assessing Fit of Hypothesized Models
 
 
                              11A.12 Model Estimation: Assessing Pattern Coefficients
 
 
                              11A.13 Model Respecification
 
 
                              11A.14 General Considerations
 
 
                              11A.15 Recommended Readings
 
 
 
Chapter 11B: Confirmatory Factor Analysis Using IBM SPSS Amos
                              11B.1 Using IBM SPSS Amos
 
 
                              11B.3 Analysis Setup to Specify the Model
 
 
                              11B.4 Model Identification
 
 
                              11B.5 Structuring and Performing the Analysis
 
 
                              11B.6 Working With the Analysis Output
 
 
                              11B.7 Respecifying the Model
 
 
                              11B.8 Output From the Respecified Model
 
 
                              11B.9 Reporting Confirmatory Factor Analysis Results
 
 
 
Chapter 12A: Path Analysis: Multiple Regression Analysis
                              12A.2 The Concept of a Path Model
 
 
                              12A.3 The Appeal of Path Over Multiple Regression Analysis
 
 
                              12A.4 Causality and Path Analysis
 
 
                              12A.5 The Roles Played by Variables in a Path Structure
 
 
                              12A.6 The Assumptions of Path Analysis
 
 
                              12A.7 Missing Values in Path Analysis
 
 
                              12A.8 The Multiple Regression Approach to Path Analysis
 
 
                              12A.9 Indirect and Total Effects
 
 
                              12A.10 Recommended Readings
 
 
 
Chapter 12B: Path Analysis: Multiple Regression Analysis Using IBM SPSS
                              12B.1 The Data Set and Model Used in Our Example
 
 
                              12B.2 Identifying the Variables in Each Analysis
 
 
                              12B.3 Predicting Months_Teaching
 
 
                              12B.4 Predicting Good_Teaching
 
 
                              12B.5 Reporting the Path Analysis Results
 
 
 
Chapter 13A: Path Analysis: Structural Equation Modeling
                              13A.1 Comparing Multiple Regression and Structural Equation Model Approaches
 
 
                              13A.2 Differences Between the Equations Underlying Multiple Regression and Structural Equation Model Procedures
 
 
                              13A.3 Configuring the Structural Model
 
 
                              13A.4 Identifying the Structural Equation Model
 
 
                              13A.5 Recommended Readings
 
 
 
Chapter 13B: Path Analysis: Structural Equation Modeling Using IBM SPSS Amos
                              13B.2 The Data Set and Model Used in Our Example
 
 
                              13B.4 The Analysis Output
 
 
                              13B.5 Reporting the Path Analysis Results
 
 
 
Chapter 14A: Structural Equation Modeling
                              14A.1 Overview of Structural Equation Modeling
 
 
                              14A.2 Model Quality and the Structural Aspects of the Model
 
 
                              14A.3 Latent Variables and Their Indicators
 
 
                              14A.4 Identifying Structural Equation Models
 
 
                              14A.5 Recommended Readings
 
 
 
Chapter 14B: Structural Equation Modeling Using IBM SPSS Amos
                              14B.2 The Data Set and Model Used in Our Example
 
 
                              14B.3 Model Configuration and Analysis Setup
 
 
                              14B.4 Model Identification
 
 
                              14B.5 Generating the Output
 
 
                              14B.6 Analysis Output for the Model
 
 
                              14B.7 Configuring and Evaluating the Respecified Model
 
 
                              14B.8 Summary of the Results of the Model and Noting the Follow-up Analyses
 
 
                              14B.9 Assessing the Indirect Effects in the Full Model
 
 
                              14B.10 Assessing the Possibility of Having Obtained Complete Mediation in the Full Model
 
 
                              14B.11 Assessing Mediation Through Self_ Regulation
 
 
                              14B.12 Assessing Mediation Through Extrinsic_Goals
 
 
                              14B.13 Synthesis of the Results
 
 
                              14B.14 Reporting the SEM Results
 
 
 
Chapter 15A: Measurement and Structural Equation Modeling Invariance: Applying a Model to a Different Group
                              15A.2 The General Strategy Used to Compare Groups
 
 
                              15A.3 The Omnibus Model Comparison Phase
 
 
                              15A.4 The Coefficient Comparison Phase
 
 
                              15A.5 Recommended Readings
 
 
 
Chapter 15B: Assessing Measurement and Structural Invariance for Confirmatory Factor Analysis and Structural Equation Models Using IBM SPSS Amos
                              15B.1 Overview and General Analysis Strategy
 
 
                              15B.2 The Data Set Used for Examining Invariance in Both the Confirmatory Factor Analysis and Structural Equation Model Examples
 
 
                              15B.3 Confirmatory Factor Analysis Invariance: Global Preliminary Analysis
 
 
                              15B.4 Confirmatory Factor Analysis Invariance: Group 1 (Rural) Analysis
 
 
                              15B.5 Confirmatory Factor Analysis Invariance: Group 2 Analysis
 
 
                              15B.6 Confirmatory Factor Analysis Invariance: Model Evaluation Setup
 
 
                              15B.7 Confirmatory Factor Analysis Invariance: Model Evaluation Output
 
 
                              15B.8 Reporting the Confirmatory Factor Analysis Invariance Results
 
 
                              15B.9 Structural Equation Model Invariance: Global Preliminary Analysis
 
 
                              15B.10 Structural Equation Model Invariance: Group 1 (Rural) Analysis
 
 
                              15B.11 Structural Equation Model Invariance: Group 2 Analysis
 
 
                              15B.12 Structural Equation Model Invariance: Model Evaluation Setup
 
 
                              15B.13 Structural Equation Model Invariance: Model Evaluation Output
 
 
                              15B.14 Reporting the Structural Equation Model Invariance Results
 
 
 
PART IV: CONSOLIDATING STIMULI AND CASES
 
Chapter 16A: Multidimensional Scaling
                              16A.2 The Paired Comparison Method
 
 
                              16A.3 Dissimilarity Data in MDS
 
 
                              16A.4 Similarity/Dissimilarity Conceived as an Index of Distance
 
 
                              16A.5 Dimensionality in MDS
 
 
                              16A.6 Data Collection Methods
 
 
                              16A.7 Similarity Versus Dissimilarity
 
 
                              16A.9 A Classification Schema for MDS Techniques
 
 
                              16A.10 Types of MDS Models
 
 
                              16A.11 Assessing Model Fit
 
 
                              16A.12 Recommended Readings
 
 
 
Chapter 16B: Multidimensional Scaling Using IBM SPSS
                              16B.1 The Structure of This Chapter
 
 
 
Chapter 17A: Cluster Analysis
                              17A.2 Two Types of Clustering
 
 
                              17A.3 Hierarchical Clustering
 
 
                              17A.5 Recommended Readings
 
 
 
Chapter 17B: Cluster Analysis Using IBM SPSS
                              17B.1 Hierarchical Cluster Analysis
 
 
                              17B.2 k-Means Cluster Analysis
 
 
 
PART V: COMPARING SCORES
 
Chapter 18A: Between Subjects Comparisons of Means
                              18A.3 A Brief Review of Some Basic Concepts
 
 
                              18A.4 Using Multiple Dependent Variables
 
 
                              18A.5 Evaluating Statistical Significance
 
 
                              18A.7 Designs, Effects, and Partitioning of the Variance
 
 
                              18A.8 Post-ANOVA Comparisons of Means
 
 
                              18A.9 Hierarchical Analysis of Effects
 
 
                              18A.10 Covariance Analysis
 
 
                              18A.11 Recommended Readings
 
 
 
Chapter 18B: Between Subjects ANCOVA, MANOVA, and MANCOVA Using IBM SPSS
                              18B.1 One-Way ANOVA Without the Covariate
 
 
                              18B.5 Two-Way MANOVA Without the Covariate
 
 
                              18B.6 Two-Way MANOVA Incorporating the Covariate (MANCOVA)
 
 
 
Chapter 19A: Discriminant Function Analysis
                              19A.2 The Formal Roles of the Variables in Discriminant Function Analysis and MANOVA
 
 
                              19A.3 Discriminant Function Analysis and Logistic Analysis Compared
 
 
                              19A.4 Sample Size for Discriminant Analysis
 
 
                              19A.5 The Discriminant Model
 
 
                              19A.6 Extracting Multiple Discriminant Functions
 
 
                              19A.7 Dynamics of Extracting Discriminant Functions
 
 
                              19A.8 Interpreting the Discriminant Function
 
 
                              19A.9 Assessing Statistical Significance and the Relative Strength of the Discriminative Functions
 
 
                              19A.10 Using Discriminant Function Analysis for Classification
 
 
                              19A.11 Different Discriminant Function Methods
 
 
                              19A.12 Recommended Readings
 
 
 
Chapter 19B: Three-Group Discriminant Function Analysis Using IBM SPSS
                              19B.4 Reporting the Results of a Three- Group Discriminant Function Analysis
 
 
 
Chapter 20A: Survival Analysis
                              20A.2 The Dependent Variable in Survival Analysis
 
 
                              20A.3 Ordinary Least Squares Regression Versus Survival Analysis
 
 
                              20A.4 Censored Observations
 
 
                              20A.5 Overview of Analysis Techniques for Survival Analysis in IBM SPSS
 
 
                              20A.6 Life Table Analysis
 
 
                              20A.7 Kaplan–Meier (Product-Limit) Survival Function Analysis
 
 
                              20A.8 Cox Proportional Hazard Regression Model
 
 
                              20A.9 Recommended Readings
 
 
 
Chapter 20B: Survival Analysis Using IBM SPSS
                              20B.3 Kaplan–Meier (Product-Limit) Survival Function Analysis
 
 
                              20B.4 Cox Proportional Hazard Regression Model
 
 
 
References
 
Appendix A: Statistics Tables
 
Author Index
 
Subject Index