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首页> 外文期刊>Bernoulli: official journal of the Bernoulli Society for Mathematical Statistics and Probability >Stochastic comparisons of stratified sampling techniques for some Monte Carlo estimators
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Stochastic comparisons of stratified sampling techniques for some Monte Carlo estimators

机译:某些蒙特卡洛估计量的分层抽样技术的随机比较

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摘要

We compare estimators of the (essential) supremum and the integral of a function f defined on a measurable space when f may be observed at a sample of points in its domain, possibly with error. The estimators compared vary in their levels of stratification of the domain, with the result that more refined stratification is better with respect to different criteria. The emphasis is on criteria related to stochastic orders. For example, rather than compare estimators of the integral of f by their variances (for unbiased estimators), or mean square error, we attempt the stronger comparison of convex order when possible. For the supremum, the criterion is based on the stochastic order of estimators.
机译:当可能在其域中的点样本上观察到f时,我们可能会比较(基本)极值的估计量和在可测量空间上定义的f的积分。比较的估计量在其域分层级别上有所不同,结果是,就不同标准而言,更精细的分层更好。重点是与随机订单有关的标准。例如,我们不尝试通过方差比较f积分的估计量(对于无偏估计量)或均方误差,而是在可能的情况下尝试进行更强的凸阶比较。对于最高值,该准则基于估计量的随机顺序。

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