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Adaptive Importance Sampling via Stochastic Convex Programming (1412.4845v2)
Published 16 Dec 2014 in stat.ME, math.OC, and stat.CO
Abstract: We show that the variance of the Monte Carlo estimator that is importance sampled from an exponential family is a convex function of the natural parameter of the distribution. With this insight, we propose an adaptive importance sampling algorithm that simultaneously improves the choice of sampling distribution while accumulating a Monte Carlo estimate. Exploiting convexity, we prove that the method's unbiased estimator has variance that is asymptotically optimal over the exponential family.
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