A novel sandwich algorithm for empirical Bayes analysis of rank data
Abstract
Rank data arises frequently in marketing, nance, organizational
behavior, and psychology. Most analysis of rank data reported in the
literature assumes the presence of one or more variables (sometimes
latent) based on whose values the items are ranked. In this paper we
analyze rank data using a purely probabilistic model where the observed
ranks are assumed to be perturbed versions of the true rank
and each perturbation has a speci c probability of occurring. We consider
the general case when covariate information is present and has
an impact on the rankings. An empirical Bayes approach is taken for
estimating the model parameters. The Gibbs sampler is shown to converge
very slowly to the target posterior distribution and we show that
some of the widely used empirical convergence diagnostic tools may
fail to detect this lack of convergence. We propose a novel, fast mixing
sandwich algorithm for exploring the posterior distribution. An EM
algorithm based on Markov chain Monte Carlo (MCMC) sampling is
developed for estimating prior hyper parameters. A real life rank data
set is analyzed using the methods developed in the paper. The results
obtained indicate the usefulness of these methods in analyzing rank
data with covariate information.
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