Publication | Open Access
Latent Nested Nonparametric Priors (with Discussion)
45
Citations
31
References
2019
Year
Bayesian StatisticBayesian StatisticsDiscrete Random StructuresEngineeringMixture DistributionData ScienceLatent ModelingRandom MeasuresStatistical InferenceTopic ModelingPublic HealthFunctional Data AnalysisStatisticsBayesian InferenceBayesian Hierarchical Modeling
Discrete random structures are important tools in Bayesian nonparametrics and the resulting models have proven effective in density estimation, clustering, topic modeling and prediction, among others. In this paper, we consider nested processes and study the dependence structures they induce. Dependence ranges between homogeneity, corresponding to full exchangeability, and maximum heterogeneity, corresponding to (unconditional) independence across samples. The popular nested Dirichlet process is shown to degenerate to the fully exchangeable case when there are ties across samples at the observed or latent level. To overcome this drawback, inherent to nesting general discrete random measures, we introduce a novel class of latent nested processes. These are obtained by adding common and group-specific completely random measures and, then, normalizing to yield dependent random probability measures. We provide results on the partition distributions induced by latent nested processes, and develop a Markov Chain Monte Carlo sampler for Bayesian inferences. A test for distributional homogeneity across groups is obtained as a by-product. The results and their inferential implications are showcased on synthetic and real data.
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