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首页> 外文期刊>Proceedings of the Workshop on Principles of Advanced and Distributed Simulation >PARALLEL BAYESIAN POLICIES FOR FINITE-HORIZON MULTIPLE COMPARISONS WITH A KNOWN STANDARD
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PARALLEL BAYESIAN POLICIES FOR FINITE-HORIZON MULTIPLE COMPARISONS WITH A KNOWN STANDARD

机译:具有已知标准的有限水平多重比较的并行贝叶斯策略

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摘要

We consider the problem of multiple comparisons with a known standard, in which we wish to allocate simulation effort efficiently across a finite number of simulated systems, to determine which systems have mean performance exceeding a known threshold. We suppose that parallel computing resources are available, and that we are given a fixed simulation budget. We consider this problem in a Bayesian setting, and formulate it as a stochastic dynamic program. For simplicity, we focus on Bernoulli sampling, with a linear loss function. Using links to restless multi-armed bandits, we provide a computationally tractable upper bound on the value of the Bayes-optimal policy, and an index policy motivated by these upper bounds.
机译:我们考虑与已知标准进行多次比较的问题,在该标准中,我们希望在有限数量的模拟系统中有效分配模拟工作量,以确定哪些系统的平均性能超过已知阈值。我们假设并行计算资源可用,并且给定了固定的仿真预算。我们在贝叶斯环境中考虑此问题,并将其表述为随机动态程序。为简单起见,我们重点介绍具有线性损耗函数的伯努利采样。通过使用不安定的多臂匪徒的链接,我们提供了贝叶斯最优策略的值在计算上易于处理的上限,以及由这些上限激发的索引策略。

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