Non-Stationary Delayed Combinatorial Semi-Bandit With Causally Related Rewards

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Saeed Ghoorchian;Steven Bilaj;Setareh Maghsudi
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引用次数: 0

Abstract

Sequential decision-making under uncertainty is often associated with long feedback delays. Such delays degrade the performance of the learning agent in identifying a subset of arms with the optimal collective reward in the long run. This problem becomes significantly challenging in a non-stationary environment with structural dependencies amongst the reward distributions associated with the arms. Therefore, besides adapting to delays and environmental changes, learning the causal relations alleviates the adverse effects of feedback delay on the decision-making process. We formalize the described setting as a non-stationary and delayed combinatorial semi-bandit problem with causally related rewards. We model the causal relations by a directed graph in a stationary structural equation model. The agent maximizes the long-term average payoff, defined as a linear function of the base arms' rewards. We develop a policy that learns the structural dependencies from delayed feedback and utilizes that to optimize the decision-making while adapting to drifts. We prove a regret bound for the performance of the proposed algorithm. Besides, we evaluate our method via numerical analysis using synthetic and real-world datasets to detect the regions that contribute the most to the spread of Covid-19 in Italy.
不确定性条件下的顺序决策往往与较长的反馈延迟有关。这种延迟会降低学习代理的性能,使其无法识别出具有长期最优集体奖励的武器子集。在非稳态环境中,与武器相关的奖励分布之间存在结构依赖关系,因此这一问题变得极具挑战性。因此,除了适应延迟和环境变化外,学习因果关系还能减轻反馈延迟对决策过程的不利影响。我们将所述环境形式化为一个具有因果关系奖励的非稳态延迟组合半比特问题。我们通过静态结构方程模型中的有向图来模拟因果关系。代理最大化长期平均报酬,该报酬被定义为基臂报酬的线性函数。我们开发了一种策略,可以从延迟反馈中学习结构依赖性,并利用它来优化决策,同时适应漂移。我们证明了所提算法性能的遗憾约束。此外,我们还通过使用合成数据集和真实数据集进行数值分析来评估我们的方法,从而检测出哪些地区对 Covid-19 在意大利的传播贡献最大。
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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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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