Charlotte: Information Age Publishing, 2019. — 276 p.
What is latent class analysis? If you asked that question thirty or forty years ago you would have gotten a different answer than you would today. Closer to its time of inception, latent class analysis was viewed primarily as a categorical data analysis technique, often framed as a factor analysis model where both the measured variable indicators and underlying latent variables are categorical. Today, however, it rests within much broader mixture and diagnostic modeling framework, integrating measured and latent variables that may be categorical and/or continuous, and where latent classes serve to define the subpopulations for whom many aspects of the focal measured and latent variable model may differ.
For latent class analysis to take these developmental leaps required contributions that were methodological, certainly, as well as didactic. Among the leaders on both fronts was C. Mitchell "Chan" Dayton, at the University of Maryland, whose work in latent class analysis spanning several decades helped the method to expand and reach its current potential. The current volume in the Center for Integrated Latent Variable Research (CILVR) series reflects the diversity that is latent class analysis today, celebrating work related to, made possible by, and inspired by Chan's noted contributions, and signaling the even more exciting future yet to come.
Series page
Advances in Latent Class Analysis
Library of Congress Cataloging-in-Publication Data
Biographic Sketch of Chauncey Mitchell Dayton
On the Measurement of Noncompliance Using (Randomized) Item Response Models
Understanding Latent Class Model Selection Criteria by Concomitant-Variable Latent Class Models
Comparison of Multidimensional Item Response Models
Nonloglinear Marginal Latent Class Models
Mixture of Factor Analyzers for the Clustering and Visualization of High-Dimensional Data
Multimethod Latent Class Analysis
The Use of Graphs in Latent Variable Modeling
Logistic Regression With Floor and Ceiling Effects
Model Based Analysis of Incomplete Data Using the Mixture Index of Fit
A Systematic Investigation of Within-Subject and Between-Subject Covariance Structures in Growth Mixture Models
Latent Class Scaling Models for Longitudinal and Multilevel Data Sets
Modeling Structured Multiple Classification Latent Classes in Multiple Populations
About the Editors