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Bayesian Approach to Multicentre Sparse Data
Authors:M Subbiah  B Kishore Kumar
Institution:1. Department of Mathematics , R.M.D. Engineering College , Tamil Nadu, India;2. Department of Statistics , University of Madras , Tamil Nadu, India
Abstract:In a 2 × 2 contingency table, when the sample size is small, there may be a number of cells that contain few or no observations, usually referred to as sparse data. In such cases, a common recommendation in the conventional frequentist methods is adding a small constant to every cell of the observed table to find the estimates of the unknown parameters. However, this approach is based on asymptotic properties of the estimates and may work poorly for small samples. An alternative approach would be to use Bayesian methods in order to provide better insight into the problem of sparse data coupled with fewer centers, which would otherwise be difficult to carry out the analysis. In this article, an attempt has been made to use hierarchical Bayesian model to a multicenter data on the effect of a surgical treatment with standard foot care among leprosy patients with posterior tibial nerve damage which is summarized as seven 2 × 2 tables. Monte Carlo Markov Chain (MCMC) techniques are applied in estimating the parameters of interest under sparse data setup.
Keywords:Bayesian method  Hierarchical models  MCMC  Sparse data
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