English

Inference problems in binary regression model with misclassified responses

Statistics Theory 2020-09-28 v3 Statistics Theory

Abstract

Misclassification of binary responses, if ignored, may severely bias the maximum likelihood estimators (MLE) of regression parameters. For such data, a binary regression model incorporating misclassification probabilities is extensively used by researchers in different application contexts. The model, however, suffers from a serious estimation problem because of confounding of the unknown misclassification probabilities with the regression parameters. To overcome this problem, in addition to the main sample, use of internal validation data is proposed. However, the maximum likelihood estimators (MLE) are found to be substantially biased. Investigating further, we propose a maximum pseudo-likelihood method of estimation which leads to bias reduction. For drawing inference on the regression parameters, we develop a rigorous asymptotic theory for the maximum pseudo-likelihood estimators under standard assumptions. To facilitate its easy implementation, a bootstrapped version of the estimator is proposed, and its distributional consistency is proved. Extensions of these results are also provided for more general misclassification models. The results of the simulation studies are encouraging. The methodology is illustrated with a survey data.

Keywords

Cite

@article{arxiv.1611.06727,
  title  = {Inference problems in binary regression model with misclassified responses},
  author = {Arindam Chatterjee and Tathagata Bandyopadhyay and Sumanta Adhya},
  journal= {arXiv preprint arXiv:1611.06727},
  year   = {2020}
}

Comments

The numerical results on the full likelihood estimators in Section 3 are not correct. The paper will be modified suitably

R2 v1 2026-06-22T16:59:00.448Z