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Importance Weighting Approach in Kernel Bayes' Rule

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arxiv 2202.02474 v3 pith:NEGYJK2D submitted 2022-02-05 stat.ML cs.LG

Importance Weighting Approach in Kernel Bayes' Rule

classification stat.ML cs.LG
keywords importancekernelapproachfeaturesweightingbayesbayesianestimator
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We study a nonparametric approach to Bayesian computation via feature means, where the expectation of prior features is updated to yield expected kernel posterior features, based on regression from learned neural net or kernel features of the observations. All quantities involved in the Bayesian update are learned from observed data, making the method entirely model-free. The resulting algorithm is a novel instance of a kernel Bayes' rule (KBR), based on importance weighting. This results in superior numerical stability to the original approach to KBR, which requires operator inversion. We show the convergence of the estimator using a novel consistency analysis on the importance weighting estimator in the infinity norm. We evaluate KBR on challenging synthetic benchmarks, including a filtering problem with a state-space model involving high dimensional image observations. Importance weighted KBR yields uniformly better empirical performance than the original KBR, and competitive performance with other competing methods.

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