Drawing from his extensive experience in the field of survey methodology, the author examines early models for survey measurement error and identifies their similarities and differences as well as their strengths and weaknesses. Subsequent chapters treat topics related to modeling, estimating, and reducing errors in surveys, including:
· Measurement error modeling forcategorical data
· The Hui-Walter model and othermethods for two indicators
· The EM algorithm and its role in latentclass model parameter estimation
· Latent class models for three ormore indicators
· Techniques for interpretation of modelparameter estimates
· Advanced topics in LCA, including sparse data, boundary values, unidentifiability, and local maxima
· Special considerations for analyzing datafrom clustered and unequal probability samples with nonresponse
· The current state of LCA and MLCA (multilevel latent class analysis), and an insightful discussion on areas for further research
Throughout the book, more than 100 real-world examples describe the presented methods in detail, and readers are guided through the use of lEM software to replicate the presented analyses. Appendices supply a primer on categorical data analysis, and a related Web site houses the lEM software.
Extensively class-tested to ensure an accessible presentation, Latent Class Analysis of Survey Error is an excellent book for courses on measurement error and survey methodology at the graduate level. The book also serves as a valuable reference for researchers and practitioners working in business, government, and the social sciences who develop, implement, or evaluate surveys.