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Learning Approximately Objective Priors

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arxiv 1704.01168 v3 pith:JX3MRUMC submitted 2017-04-04 stat.ML stat.CO

Learning Approximately Objective Priors

classification stat.ML stat.CO
keywords priorsobjectivereferencelearningpriorfamilyjeffreysaddress
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Informative Bayesian priors are often difficult to elicit, and when this is the case, modelers usually turn to noninformative or objective priors. However, objective priors such as the Jeffreys and reference priors are not tractable to derive for many models of interest. We address this issue by proposing techniques for learning reference prior approximations: we select a parametric family and optimize a black-box lower bound on the reference prior objective to find the member of the family that serves as a good approximation. We experimentally demonstrate the method's effectiveness by recovering Jeffreys priors and learning the Variational Autoencoder's reference prior.

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