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On Nesting Monte Carlo Estimators

机译:关于嵌套蒙特卡洛估计

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Many problems in machine learning and statistics involve nested expectations and thus do not permit conventional Monte Carlo (MC) estimation. For such problems, one must nest estimators, such that terms in an outer estimator themselves involve calculation of a separate, nested, estimation. We investigate the statistical implications of nesting MC estimators, including cases of multiple levels of nesting, and establish the conditions under which they converge. We derive corresponding rates of convergence and provide empirical evidence that these rates are observed in practice. We further establish a number of pitfalls that can arise from naive nesting of MC estimators, provide guidelines about how these can be avoided, and lay out novel methods for reformulating certain classes of nested expectation problems into single expectations, leading to improved convergence rates. We demonstrate the applicability of our work by using our results to develop a new estimator for discrete Bayesian experimental design problems and derive error bounds for a class of variational objectives.
机译:机器学习和统计中的许多问题都涉及嵌套的期望,因此不允许常规的蒙特卡洛(MC)估计。对于此类问题,必须嵌套估算器,以使外部估算器中的项本身涉及对单独的嵌套估算的计算。我们调查了嵌套MC估计量的统计含义,包括多层嵌套的情况,并确定了它们收敛的条件。我们得出相应的收敛速率,并提供经验证据表明这些速率在实践中得到遵守。我们进一步建立了MC估计量的幼稚嵌套可能导致的许多陷阱,提供了有关如何避免这些陷阱的指南,并提出了将某些类别的嵌套期望问题重构为单个期望的新颖方法,从而提高了收敛速度。我们通过使用我们的结果为离散贝叶斯实验设计问题开发一种新的估计器,并得出一类变分目标的误差范围,证明了我们工作的适用性。

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