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arxiv: 1805.01045 · v2 · pith:BUOIJYVInew · submitted 2018-05-02 · 📊 stat.ML · cs.LG

Alpha-Beta Divergence For Variational Inference

classification 📊 stat.ML cs.LG
keywords variationaldivergenceobjectivealpha-betainferenceobjectivesaccessachieved
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This paper introduces a variational approximation framework using direct optimization of what is known as the {\it scale invariant Alpha-Beta divergence} (sAB divergence). This new objective encompasses most variational objectives that use the Kullback-Leibler, the R{\'e}nyi or the gamma divergences. It also gives access to objective functions never exploited before in the context of variational inference. This is achieved via two easy to interpret control parameters, which allow for a smooth interpolation over the divergence space while trading-off properties such as mass-covering of a target distribution and robustness to outliers in the data. Furthermore, the sAB variational objective can be optimized directly by repurposing existing methods for Monte Carlo computation of complex variational objectives, leading to estimates of the divergence instead of variational lower bounds. We show the advantages of this objective on Bayesian models for regression problems.

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  1. A note on the unique properties of the Kullback--Leibler divergence for sampling via gradient flows

    stat.ME 2025-07 unverdicted novelty 6.0

    The Kullback-Leibler divergence is the only Bregman divergence whose gradient flow with respect to many popular metrics does not require the normalizing constant of the target distribution π.