JOURNAL ARTICLE

Restricted Latent Class Models for Nominal Response Data: Identifiability and Estimation

Ying LiuSteven Andrew Culpepper

Year: 2023 Journal:   Psychometrika Vol: 89 (2)Pages: 592-625   Publisher: Springer Science+Business Media

Abstract

Restricted latent class models (RLCMs) provide an important framework for diagnosing and classifying respondents on a collection of multivariate binary responses. Recent research made significant advances in theory for establishing identifiability conditions for RLCMs with binary and polytomous response data. Multiclass data, which are unordered nominal response data, are also widely collected in the social sciences and psychometrics via forced-choice inventories and multiple choice tests. We establish new identifiability conditions for parameters of RLCMs for multiclass data and discuss the implications for substantive applications. The new identifiability conditions are applicable to a wealth of RLCMs for polytomous and nominal response data. We propose a Bayesian framework for inferring model parameters, assess parameter recovery in a Monte Carlo simulation study, and present an application of the model to a real dataset.

Keywords:
Identifiability Polytomous Rasch model Item response theory Binary data Bayesian probability Econometrics Computer science Multivariate statistics Binary number Latent class model Data mining Psychometrics Statistics Mathematics Machine learning Artificial intelligence

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6
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3.83
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57
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0.90
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Citation History

Topics

Survey Sampling and Estimation Techniques
Physical Sciences →  Mathematics →  Statistics and Probability
Urban, Neighborhood, and Segregation Studies
Social Sciences →  Social Sciences →  Sociology and Political Science
Bayesian Methods and Mixture Models
Physical Sciences →  Computer Science →  Artificial Intelligence

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