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How Expert Confidence Can Improve Collective Decision-Making in Contextual Multi-Armed Bandit Problems

机译:专家信心如何改善中文多武装匪徒问题的集体决策

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In collective decision-making (CDM) a group of experts with a shared set of values and a common goal must combine their knowledge to make a collectively optimal decision. Whereas existing research on CDM primarily focuses on making binary decisions, we focus here on CDM applied to solving contextual multi-armed bandit (CMAB) problems, where the goal is to exploit contextual information to select the best arm among a set. To address the limiting assumptions of prior work, we introduce confidence estimates and propose a novel approach to deciding with expert advice which can take advantage of these estimates. We further show that, when confidence estimates are imperfect, the proposed approach is more robust than the classical confidence-weighted majority vote.
机译:在集体决策(CDM)中,一组具有共同价值观的专家和共同目标必须将他们的知识结合在一起,以制定一个集体最佳决定。 虽然关于CDM的现有研究主要侧重于制作二进制决策,但我们专注于CDM应用于解决上下文多武装强盗(CMAB)问题,其中目标是利用上下文信息来选择集合中的最佳臂。 为了解决事后工作的限制假设,我们引入信心估计,并提出了一种新的方法来决定能够利用这些估计的专家建议。 我们进一步表明,当信心估计不完美时,所提出的方法比古典信心加权的多数票更强大。

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