具有一次性数据集成的因果上下文强盗。

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2024-12-06 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1346700
Chandrasekar Subramanian, Balaraman Ravindran
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引用次数: 0

摘要

我们研究了一个上下文强盗设置,其中代理除了能够在预算内一次性执行对应于潜在不同上下文-动作对的多个目标实验之外,还可以访问因果侧信息。这种新的形式为几个现实世界的场景提供了一个自然的模型,在这些场景中可以进行平行的目标实验,并且可以获得一些因果关系的领域知识。我们提出了一种新的算法,它利用了我们引入的一种新的类似熵的度量。我们进行了几个实验,既使用纯合成数据,也使用真实世界的数据集。此外,我们还研究了算法性能对问题设置各个方面的敏感性。结果表明,该算法在所有实验中都优于基线。我们还证明了该算法是合理的;也就是说,随着预算的增加,学习到的策略最终收敛到最优策略。此外,我们在理论上将算法的遗憾约束在附加假设下。最后,我们提供了用我们的算法实现两种流行的公平概念的方法,即反事实公平和人口均等。
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Causal contextual bandits with one-shot data integration.

We study a contextual bandit setting where the agent has access to causal side information, in addition to the ability to perform multiple targeted experiments corresponding to potentially different context-action pairs-simultaneously in one-shot within a budget. This new formalism provides a natural model for several real-world scenarios where parallel targeted experiments can be conducted and where some domain knowledge of causal relationships is available. We propose a new algorithm that utilizes a novel entropy-like measure that we introduce. We perform several experiments, both using purely synthetic data and using a real-world dataset. In addition, we study sensitivity of our algorithm's performance to various aspects of the problem setting. The results show that our algorithm performs better than baselines in all of the experiments. We also show that the algorithm is sound; that is, as budget increases, the learned policy eventually converges to an optimal policy. Further, we theoretically bound our algorithm's regret under additional assumptions. Finally, we provide ways to achieve two popular notions of fairness, namely counterfactual fairness and demographic parity, with our algorithm.

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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
期刊最新文献
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