AI RESEARCH
Predictive variational inference: Learn the predictively optimal posterior distribution
arXiv CS.LG
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ArXi:2410.14843v3 Announce Type: replace-cross Vanilla variational inference finds an optimal approximation to the Bayesian posterior distribution, but even the exact Bayesian posterior is often not meaningful under model misspecification. We propose predictive variational inference (PVI): a general inference framework that seeks and samples from an optimal posterior density such that the resulting posterior predictive distribution is as close to the true data generating process as possible, while this closeness is measured by multiple scoring rules.