具有自然非凸约束的鲁棒罕见事件性能分析

J. Blanchet, C. Dolan, H. Lam
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引用次数: 8

摘要

我们考虑一种常见类型的稳健性能分析,它被表述为在Kullback-Leibler意义上的基线模型的某些公差范围内的所有概率模型中的期望最大化。这种凹规划的解易于处理,并提供了一个对模型错配具有鲁棒性的上界。然而,这个健壮的公式不能保留一些自然的随机结构,如i.i.d模型假设,因此,上界可能是悲观的。不幸的是,引入i.i.d假设作为约束使得潜在的优化问题非常难以解决。我们在罕见事件设置中说明了这些现象,并提出了一种基于大偏差的方法来解决这一具有挑战性的问题,在渐近意义上解决一类自然随机漫步问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust rare-event performance analysis with natural non-convex constraints
We consider a common type of robust performance analysis that is formulated as maximizing an expectation among all probability models that are within some tolerance of a baseline model in the Kullback-Leibler sense. The solution of such concave program is tractable and provides an upper bound which is robust to model misspecification. However, this robust formulation fails to preserve some natural stochastic structures, such as i.i.d. model assumptions, and as a consequence, the upper bounds might be pessimistic. Unfortunately, the introduction of i.i.d. assumptions as constraints renders the underlying optimization problem very challenging to solve. We illustrate these phenomena in the rare event setting, and propose a large-deviations based approach for solving this challenging problem in an asymptotic sense for a natural class of random walk problems.
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