Modeling Misclassification in Spousal Violence Reporting: Evidence from Bayesian Quantile Regression
摘要
Quantile regression extends regression analysis beyond the conditional mean, providing a richer characterization of covariate effects across the outcome distribution. For sensitive binary outcomes, however, misclassification due to underreporting can substantially bias inference. We propose a Bayesian quantile regression framework for misclassified binary outcomes that introduces a latent true response and explicitly models false negative and false positive reporting errors. Estimation is performed through a novel Markov chain Monte Carlo (MCMC) algorithm. Simulation studies under varying prior specifications and misclassification rates demonstrate improved performance over models that ignore misclassification. We apply the method to self-reported spousal violence data, examining associations with employment status and household wealth while adjusting for socio-demographic factors. The results indicate that underreporting exceeds overreporting across quantiles and that accounting for misclassification can change substantive conclusions.
引用
@article{arxiv.2605.15428,
title = {Modeling Misclassification in Spousal Violence Reporting: Evidence from Bayesian Quantile Regression},
author = {Joon Jin Song and Mohammad Arshad Rahman and Yoo-Mi Chin and James Stamey},
journal= {arXiv preprint arXiv:2605.15428},
year = {2026}
}