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Latent Variable Models: An Introduction to Factor, Path, and
Structural Equation Analysis introduces latent variable models by
utilizing path diagrams to explain the relationships in the models.
This approach helps less mathematically-inclined readers to grasp
the underlying relations among path analysis, factor analysis, and
structural equation modeling, and to set up and carry out such
analyses. This revised and expanded fifth edition again contains
key chapters on path analysis, structural equation models, and
exploratory factor analysis. In addition, it contains new material
on composite reliability, models with categorical data, the minimum
average partial procedure, bi-factor models, and communicating
about latent variable models. The informal writing style and the
numerous illustrative examples make the book accessible to readers
of varying backgrounds. Notes at the end of each chapter expand the
discussion and provide additional technical detail and references.
Moreover, most chapters contain an extended example in which the
authors work through one of the chapter's examples in detail to aid
readers in conducting similar analyses with their own data. The
book and accompanying website provide all of the data for the
book's examples as well as syntax from latent variable programs so
readers can replicate the analyses. The book can be used with any
of a variety of computer programs, but special attention is paid to
LISREL and R. An important resource for advanced students and
researchers in numerous disciplines in the behavioral sciences,
education, business, and health sciences, Latent Variable Models is
a practical and readable reference for those seeking to understand
or conduct an analysis using latent variables.
This step-by-step guide is written for R and latent variable model
(LVM) novices. Utilizing a path model approach and focusing on the
lavaan package, this book is designed to help readers quickly
understand LVMs and their analysis in R. The author reviews the
reasoning behind the syntax selected and provides examples that
demonstrate how to analyze data for a variety of LVMs. Featuring
examples applicable to psychology, education, business, and other
social and health sciences, minimal text is devoted to theoretical
underpinnings. The material is presented without the use of matrix
algebra. As a whole the book prepares readers to write about and
interpret LVM results they obtain in R. Each chapter features
background information, boldfaced key terms defined in the
glossary, detailed interpretations of R output, descriptions of how
to write the analysis of results for publication, a summary, R
based practice exercises (with solutions included in the back of
the book), and references and related readings. Margin notes help
readers better understand LVMs and write their own R syntax.
Examples using data from published work across a variety of
disciplines demonstrate how to use R syntax for analyzing and
interpreting results. R functions, syntax, and the corresponding
results appear in gray boxes to help readers quickly locate this
material. A unique index helps readers quickly locate R functions,
packages, and datasets. The book and accompanying website at
http://blogs.baylor.edu/rlatentvariable/ provides all of the data
for the book's examples and exercises as well as R syntax so
readers can replicate the analyses. The book reviews how to enter
the data into R, specify the LVMs, and obtain and interpret the
estimated parameter values. The book opens with the fundamentals of
using R including how to download the program, use functions, and
enter and manipulate data. Chapters 2 and 3 introduce and then
extend path models to include latent variables. Chapter 4 shows
readers how to analyze a latent variable model with data from more
than one group, while Chapter 5 shows how to analyze a latent
variable model with data from more than one time period. Chapter 6
demonstrates the analysis of dichotomous variables, while Chapter 7
demonstrates how to analyze LVMs with missing data. Chapter 8
focuses on sample size determination using Monte Carlo methods,
which can be used with a wide range of statistical models and
account for missing data. The final chapter examines hierarchical
LVMs, demonstrating both higher-order and bi-factor approaches. The
book concludes with three Appendices: a review of common measures
of model fit including their formulae and interpretation; syntax
for other R latent variable models packages; and solutions for each
chapter's exercises. Intended as a supplementary text for graduate
and/or advanced undergraduate courses on latent variable modeling,
factor analysis, structural equation modeling, item response
theory, measurement, or multivariate statistics taught in
psychology, education, human development, business, economics, and
social and health sciences, this book also appeals to researchers
in these fields. Prerequisites include familiarity with basic
statistical concepts, but knowledge of R is not assumed.
This step-by-step guide is written for R and latent variable model
(LVM) novices. Utilizing a path model approach and focusing on the
lavaan package, this book is designed to help readers quickly
understand LVMs and their analysis in R. The author reviews the
reasoning behind the syntax selected and provides examples that
demonstrate how to analyze data for a variety of LVMs. Featuring
examples applicable to psychology, education, business, and other
social and health sciences, minimal text is devoted to theoretical
underpinnings. The material is presented without the use of matrix
algebra. As a whole the book prepares readers to write about and
interpret LVM results they obtain in R. Each chapter features
background information, boldfaced key terms defined in the
glossary, detailed interpretations of R output, descriptions of how
to write the analysis of results for publication, a summary, R
based practice exercises (with solutions included in the back of
the book), and references and related readings. Margin notes help
readers better understand LVMs and write their own R syntax.
Examples using data from published work across a variety of
disciplines demonstrate how to use R syntax for analyzing and
interpreting results. R functions, syntax, and the corresponding
results appear in gray boxes to help readers quickly locate this
material. A unique index helps readers quickly locate R functions,
packages, and datasets. The book and accompanying website at
http://blogs.baylor.edu/rlatentvariable/ provides all of the data
for the book's examples and exercises as well as R syntax so
readers can replicate the analyses. The book reviews how to enter
the data into R, specify the LVMs, and obtain and interpret the
estimated parameter values. The book opens with the fundamentals of
using R including how to download the program, use functions, and
enter and manipulate data. Chapters 2 and 3 introduce and then
extend path models to include latent variables. Chapter 4 shows
readers how to analyze a latent variable model with data from more
than one group, while Chapter 5 shows how to analyze a latent
variable model with data from more than one time period. Chapter 6
demonstrates the analysis of dichotomous variables, while Chapter 7
demonstrates how to analyze LVMs with missing data. Chapter 8
focuses on sample size determination using Monte Carlo methods,
which can be used with a wide range of statistical models and
account for missing data. The final chapter examines hierarchical
LVMs, demonstrating both higher-order and bi-factor approaches. The
book concludes with three Appendices: a review of common measures
of model fit including their formulae and interpretation; syntax
for other R latent variable models packages; and solutions for each
chapter's exercises. Intended as a supplementary text for graduate
and/or advanced undergraduate courses on latent variable modeling,
factor analysis, structural equation modeling, item response
theory, measurement, or multivariate statistics taught in
psychology, education, human development, business, economics, and
social and health sciences, this book also appeals to researchers
in these fields. Prerequisites include familiarity with basic
statistical concepts, but knowledge of R is not assumed.
Latent Variable Models: An Introduction to Factor, Path, and Structural Equation Analysis introduces latent variable models by utilizing path diagrams to explain the relationships in the models. This approach helps less mathematically-inclined readers to grasp the underlying relations among path analysis, factor analysis, and structural equation modeling, and to set up and carry out such analyses. This revised and expanded fifth edition again contains key chapters on path analysis, structural equation models, and exploratory factor analysis. In addition, it contains new material on composite reliability, models with categorical data, the minimum average partial procedure, bi-factor models, and communicating about latent variable models.
The informal writing style and the numerous illustrative examples make the book accessible to readers of varying backgrounds. Notes at the end of each chapter expand the discussion and provide additional technical detail and references. Moreover, most chapters contain an extended example in which the authors work through one of the chapter’s examples in detail to aid readers in conducting similar analyses with their own data. The book and accompanying website provide all of the data for the book’s examples as well as syntax from latent variable programs so readers can replicate the analyses. The book can be used with any of a variety of computer programs, but special attention is paid to LISREL and R.
An important resource for advanced students and researchers in numerous disciplines in the behavioral sciences, education, business, and health sciences, Latent Variable Models is a practical and readable reference for those seeking to understand or conduct an analysis using latent variables.
Table of Contents
Contents: Preface. Path Models in Factor, Path, and Structural Equation Analysis. Fitting Path Models. Fitting Path and Structural Models to Data From a Single Group on a Single Occasion. Fitting Models Involving Repeated Measures or Multiple Groups. Exploratory Factor Analysis--Basics. Exploratory Factor Analysis--Elaborations. Issues in the Application of Latent Variable Analysis. Appendices.
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