Dependent Latent Class Models
Machine Learning
2024-06-19 v2 Statistics Theory
Statistics Theory
Abstract
Latent Class Models (LCMs) are used to cluster multivariate categorical data (e.g. group participants based on survey responses). Traditional LCMs assume a property called conditional independence. This assumption can be restrictive, leading to model misspecification and overparameterization. To combat this problem, we developed a novel Bayesian model called a Dependent Latent Class Model (DLCM), which permits conditional dependence. We verify identifiability of DLCMs. We also demonstrate the effectiveness of DLCMs in both simulations and real-world applications. Compared to traditional LCMs, DLCMs are effective in applications with time series, overlapping items, and structural zeroes.
Cite
@article{arxiv.2205.08677,
title = {Dependent Latent Class Models},
author = {Jesse Bowers and Steve Culpepper},
journal= {arXiv preprint arXiv:2205.08677},
year = {2024}
}
Comments
93 pages, 40 tables, 11 figures