Nonparametric Bayes inference on conditional independence
Abstract
In broad applications, it is routinely of interest to assess whether there is evidence in the data to refute the assumption of conditional independence of and conditionally on . Such tests are well developed in parametric models but are not straightforward in the nonparametric case. We propose a general Bayesian approach, which relies on an encompassing nonparametric Bayes model for the joint distribution of , and . The framework allows , and to be random variables on arbitrary spaces, and can accommodate different dimensional vectors having a mixture of discrete and continuous measurement scales. Using conditional mutual information as a scalar summary of the strength of the conditional dependence relationship, we construct null and alternative hypotheses. We provide conditions under which the correct hypothesis will be consistently selected. Computational methods are developed, which can be incorporated within MCMC algorithms for the encompassing model. The methods are applied to variable selection and assessed through simulations and criminology applications.
Cite
@article{arxiv.1404.1429,
title = {Nonparametric Bayes inference on conditional independence},
author = {Tsuyoshi Kunihama and David B. Dunson},
journal= {arXiv preprint arXiv:1404.1429},
year = {2015}
}