Throughout the cognitive-science literature, there is widespread agreement that decision-making agents operating in the real world do so under limited information-processing capabilities and without access to unbounded cognitive or computational resources. Prior work has drawn inspiration from this fact and leveraged an information-theoretic model of such behaviors or policies as communication channels operating under a bounded rate constraint. Meanwhile, a parallel line of work also capitalizes on the same principles from rate-distortion theory to formalize capacity-limited decision making through the notion of a learning target, which facilitates Bayesian regret bounds for provably-efficient learning algorithms. In this paper, we aim to elucidate this latter perspective by presenting a brief survey of these information-theoretic models of capacity-limited decision making in biological and artificial agents.
翻译:在整个认知-科学文献中,人们普遍同意,在现实世界中运作的决策代理人是在有限的信息处理能力下这样做的,并且无法获得不受限制的认知或计算资源。以前的工作从这一事实中汲取了灵感,并利用了通信渠道等行为或政策的信息理论模型,即通信渠道在受约束税率限制下运作。与此同时,平行的工作轨迹也利用了与费率扭曲理论相同的原则,通过学习目标概念将能力有限的决策正规化,该目标概念为巴耶斯人的遗憾为可实现有效学习算法提供了便利。在本文件中,我们的目的是通过对生物和人造剂中能力有限的决策信息理论模型进行简要调查,阐明后一种观点。