2021
DOI: 10.48550/arxiv.2110.15590
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Adaptive Importance Sampling meets Mirror Descent: a Bias-variance tradeoff

Abstract: Adaptive importance sampling is a widely spread Monte Carlo technique that uses a re-weighting strategy to iteratively estimate the so-called target distribution. A major drawback of adaptive importance sampling is the large variance of the weights which is known to badly impact the accuracy of the estimates. This paper investigates a regularization strategy whose basic principle is to raise the importance weights at a certain power. This regularization parameter, that might evolve between zero and one during … Show more

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