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Decision-making under uncertainty: using MLMC for efficient estimation of EVPPI

机译:在不确定性下决策:使用MLMC进行高效估计EVPPI

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摘要

In this paper, we develop a very efficient approach to the Monte Carlo estimation of the expected value of partial perfect information (EVPPI) that measures the average benefit of knowing the value of a subset of uncertain parameters involved in a decision model. The calculation of EVPPI is inherently a nested expectation problem, with an outer expectation with respect to one random variable X and an inner conditional expectation with respect to the other random variable Y. We tackle this problem by using a multilevel Monte Carlo (MLMC) method (Giles in Oper Res 56(3): 607-617, 2008) in which the number of inner samples for Y increases geometrically with level, so that the accuracy of estimating the inner conditional expectation improves and the cost also increases with level. We construct an antithetic MLMC estimator and provide sufficient assumptions on a decision model under which the antithetic property of the estimator is well exploited, and consequently a root-mean-square accuracy of epsilon can be achieved at a cost of O(epsilon-2). Numerical results confirm the considerable computational savings compared to the standard, nested Monte Carlo method for some simple test cases and a more realistic medical application.
机译:在本文中,我们开发了一个非常有效的方法,可以实现部分完美信息(EVPPI)的预期价值的蒙特卡罗估计,从而测量了了解决策模型中涉及的不确定参数的子集的平均益处。 EVPPI的计算本质上是嵌套期望问题,对于一个随机变量x和相对于其他随机变量Y的内部条件期望,我们通过使用多级蒙特卡罗(MLMC)方法来解决这个问题的外部期望(仪表中的吉尔斯56(3):607-617,2008),其中Y的内部样品数量几何上几何上的水平增加,从而估计内部条件期望的准确性提高,成本增加了水平。我们构建一个反向MLMC估计器,并在决策模型中提供足够的假设,在该决策模型中提供了估计器的抗动性的结构,因此ε的根均方形精度可以以o(epsilon-2)的成本实现。数值结果证实了与标准,嵌套Monte Carlo方法相比,用于一些简单的测试用例和更现实的医学应用程序的标准。

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