约束集几何性质对强盗反馈安全优化的影响

Spencer Hutchinson, Berkay Turan, M. Alizadeh
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引用次数: 2

摘要

我们考虑了一个具有强盗反馈的安全优化问题,其中智能体顺序地选择行动并观察来自环境的响应,其目标是在尊重阶段约束的同时最大化响应的任意函数。针对这一问题提出了一种算法,并研究了约束集的几何性质对算法的遗憾率的影响。为了做到这一点,我们引入了特定约束集的清晰度的概念,它表征了在不确定设置的约束集内执行学习的难度。这种清晰度的概念使我们能够识别约束集的类别,对于这些约束集,所提出的算法保证享有次线性后悔。该算法的仿真结果支持次线性遗憾界,并提供了约束集的清晰度影响算法性能的经验证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of the Geometric Properties of the Constraint Set in Safe Optimization with Bandit Feedback
We consider a safe optimization problem with bandit feedback in which an agent sequentially chooses actions and observes responses from the environment, with the goal of maximizing an arbitrary function of the response while respecting stage-wise constraints. We propose an algorithm for this problem, and study how the geometric properties of the constraint set impact the regret of the algorithm. In order to do so, we introduce the notion of the sharpness of a particular constraint set, which characterizes the difficulty of performing learning within the constraint set in an uncertain setting. This concept of sharpness allows us to identify the class of constraint sets for which the proposed algorithm is guaranteed to enjoy sublinear regret. Simulation results for this algorithm support the sublinear regret bound and provide empirical evidence that the sharpness of the constraint set impacts the performance of the algorithm.
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