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Sticking the Landing: Simple, Lower-Variance Gradient Estimators for Variational Inference

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arxiv 1703.09194 v3 pith:VYGC2P5Z submitted 2017-03-27 stat.ML cs.LG

Sticking the Landing: Simple, Lower-Variance Gradient Estimators for Variational Inference

classification stat.ML cs.LG
keywords gradientvariationalestimatorapproachesposteriorsimpleanalyzeapproximate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a simple and general variant of the standard reparameterized gradient estimator for the variational evidence lower bound. Specifically, we remove a part of the total derivative with respect to the variational parameters that corresponds to the score function. Removing this term produces an unbiased gradient estimator whose variance approaches zero as the approximate posterior approaches the exact posterior. We analyze the behavior of this gradient estimator theoretically and empirically, and generalize it to more complex variational distributions such as mixtures and importance-weighted posteriors.

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