168

Minimax Number of Strata for Online Stratified Sampling given Noisy Samples

International Conference on Algorithmic Learning Theory (ALT), 2012
Abstract

We consider the problem of online stratified sampling for Monte Carlo integration of a function given a finite budget of nn noisy evaluations to the function. More precisely we focus on the problem of choosing the number of strata KK as a function of the budget nn. We provide asymptotic and finite-time results on how an oracle that has access to the function would choose the partition optimally. In addition we prove a \textit{lower bound} on the learning rate for the problem of stratified Monte-Carlo. As a result, we are able to state, by improving the bound on its performance, that algorithm MC-UCB, defined in \citep{MC-UCB}, is minimax optimal both in terms of the number of samples n and the number of strata K, up to a log(nK)\sqrt{\log(nK)}. This enables to deduce a minimax optimal bound on the difference between the performance of the estimate outputted by MC-UCB, and the performance of the estimate outputted by the best oracle static strategy, on the class of H\"older continuous functions, and upt to a log(n)\sqrt{\log(n)}.

View on arXiv
Comments on this paper