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arxiv: 1411.0292 · v2 · pith:KKKT74R2new · submitted 2014-11-02 · 📊 stat.ML · cs.LG

Population Empirical Bayes

classification 📊 stat.ML cs.LG
keywords modelbayesianempiricalinferencepopulationpredictivemodelsaccuracy
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Bayesian predictive inference analyzes a dataset to make predictions about new observations. When a model does not match the data, predictive accuracy suffers. We develop population empirical Bayes (POP-EB), a hierarchical framework that explicitly models the empirical population distribution as part of Bayesian analysis. We introduce a new concept, the latent dataset, as a hierarchical variable and set the empirical population as its prior. This leads to a new predictive density that mitigates model mismatch. We efficiently apply this method to complex models by proposing a stochastic variational inference algorithm, called bumping variational inference (BUMP-VI). We demonstrate improved predictive accuracy over classical Bayesian inference in three models: a linear regression model of health data, a Bayesian mixture model of natural images, and a latent Dirichlet allocation topic model of scientific documents.

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