Robust Hierarchical Modeling of Counts under Zero-inflation and Outliers

06/19/2021
by   Yasuyuki Hamura, et al.
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Count data with zero inflation and large outliers are ubiquitous in many scientific applications. However, the posterior analysis under a standard statistical model such as Poisson or negative binomial distribution is sensitive to such contamination. This paper introduces a novel framework for Bayesian modeling of counts robust to both zeros inflation and large outliers. In doing so, we introduce the rescaled beta distribution and adopt it to absorb undesirable effects from zero and outlying counts. The proposed approach has two appealing features: the efficiency of the posterior computation via a custom Gibbs sampling algorithm, and the theoretical posterior robustness, where the extreme outliers are automatically removed from the posterior distribution. We demonstrate the usefulness of the proposed method through simulation and real data applications.

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