Publication | Closed Access
A New Skewed Link Model for Dichotomous Quantal Response Data
158
Citations
29
References
1999
Year
Bayesian StatisticBayesian StatisticsEngineeringData ScienceSkewed DistributionCausal InferenceStandard Improper PriorsInformative PriorsLogistic RegressionBiostatisticsStatistical InferenceBayesian InferencePublic HealthFunctional Data AnalysisStatisticsSurvey MethodologyBayesian Hierarchical Modeling
Abstract The logit, probit, and student t-links are widely used in modeling dichotomous quantal response data. Most of the commonly used link functions are symmetric, except the complementary log-log link. However, in some applications the overall fit can be significantly improved by the use of an asymmetric link. In this article we propose a new skewed link model for analyzing binary response data with covariates. Introducing a skewed distribution for the underlying latent variable, we develop a class of asymmetric link models for binary response data. Using a Bayesian approach, we first characterize the propriety of the posterior distributions using standard improper priors. We further propose informative priors using historical data from a similar previous study. We examine the proposed method through a large-scale simulation study and use data from a prostate cancer study to demonstrate the use of historical data in Bayesian model fitting and comparison of skewed link models.
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