Stochastic Selection Problems with Testing

Chen Attias, Robert Krauthgamer, R. Levi, Yaron Shaposhnik
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引用次数: 4

Abstract

We study the problem of a decision-maker having to select one of many competing alternatives (e.g., choosing between projects, designs, or suppliers) whose future revenues are a priori unknown and modeled as random variables of known probability distributions. The decision-maker can pay to test each alternative to reveal its specific revenue realization (e.g., by conducting market research), and her goal is to maximize the expected revenue of the selected alternative minus the testing costs. This model captures an interesting trade-off between gaining revenue of a high-yield alternative and spending resources to reduce the uncertainty in selecting it. The combinatorial nature of the problem leads to a dynamic programming (DP) formulation with high-dimensional state space that is computationally intractable. By characterizing the structure of the optimal policy, we derive efficient optimal and near-optimal policies that are simple and easy-to-compute. In fact, these policies are also myopic -- they only consider a limited horizon of one test. Moreover, our policies can be described using intuitive `testing intervals' around the expected revenue of each alternative, and in many cases, the dynamics of an optimal policy can be explained by the interaction between the testing intervals of various alternatives.
带有测试的随机选择问题
我们研究的问题是,决策者必须在许多竞争方案中选择一个(例如,在项目、设计或供应商之间进行选择),这些方案的未来收入是先验未知的,并被建模为已知概率分布的随机变量。决策者可以花钱测试每个备选方案,以揭示其具体的收入实现(例如,通过进行市场研究),她的目标是最大化所选备选方案减去测试成本的预期收入。这个模型在获得高收益选择的收益和花费资源以减少选择的不确定性之间进行了有趣的权衡。该问题的组合性质导致具有高维状态空间的动态规划(DP)公式在计算上难以处理。通过刻画最优策略的结构,我们推导出简单且易于计算的高效最优策略和近最优策略。事实上,这些政策也是短视的——他们只考虑了一次考试的有限范围。此外,我们的策略可以用每个备选方案的预期收入周围直观的“测试间隔”来描述,在许多情况下,最优策略的动态可以通过各种备选方案的测试间隔之间的相互作用来解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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