对cvar敏感的强盗:轻尾案例

L. A. Prashanth, K. Jagannathan, R. Kolla
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引用次数: 0

摘要

传统的多臂盗匪问题的目标是找到期望值最高的那只手臂,这是一个风险中性的目标。在一些实际应用中,例如金融,风险敏感目标是控制最坏情况下的损失,条件风险价值(CVaR)是对上述目标建模的流行风险度量。研究了固定预算下最佳臂识别框架下的CVaR优化问题。首先,我们利用经验分布函数推导出一个已知CVaR估计量的新的双侧浓度界,假设底层分布是无界的,但有轻尾。这个界限可能会引起独立的兴趣。其次,我们将著名的连续拒绝算法与基于cvar的准则相结合,并推导出我们提出的算法错误识别概率的上界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CVaR-sensitive bandits: The light-tailed case
Traditional multi-armed bandit problems are geared towards finding the arm with the highest expected value – an objective that is risk-neutral. In several practical applications, e.g., finance, a risk-sensitive objective is to control the worst-case losses and Conditional Value-at-Risk (CVaR) is a popular risk measure for modeling the aforementioned objective. We consider the CVaR optimization problem in a best-arm identification framework under a fixed budget. First, we derive a novel two-sided concentration bound for a well-known CVaR estimator using empirical distribution function, assuming that the underlying distribution is unbounded, but light-tailed. This bound may be of independent interest. Second, we adapt the well-known successive rejects algorithm to incorporate a CVaRbased criterion and derive an upper-bound on the probability of incorrect identification of our proposed algorithm.
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