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arxiv: 2302.13918 · v1 · pith:LPSDMFBGnew · submitted 2023-02-27 · 💻 cs.LG · stat.ML

U-Statistics for Importance-Weighted Variational Inference

classification 💻 cs.LG stat.ML
keywords varianceinferencebasebatchescomputationalestimationestimatorgradient
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We propose the use of U-statistics to reduce variance for gradient estimation in importance-weighted variational inference. The key observation is that, given a base gradient estimator that requires $m > 1$ samples and a total of $n > m$ samples to be used for estimation, lower variance is achieved by averaging the base estimator on overlapping batches of size $m$ than disjoint batches, as currently done. We use classical U-statistic theory to analyze the variance reduction, and propose novel approximations with theoretical guarantees to ensure computational efficiency. We find empirically that U-statistic variance reduction can lead to modest to significant improvements in inference performance on a range of models, with little computational cost.

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