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Bayesian Reinforcement Learning With Limited Cognitive Load

Dilip Arumugam, Mark K. Ho, Noah D. Goodman, Benjamin Van Roy

2024Open Mind10 citationsDOIOpen Access PDF

Abstract

Abstract All biological and artificial agents must act given limits on their ability to acquire and process information. As such, a general theory of adaptive behavior should be able to account for the complex interactions between an agent’s learning history, decisions, and capacity constraints. Recent work in computer science has begun to clarify the principles that shape these dynamics by bridging ideas from reinforcement learning, Bayesian decision-making, and rate-distortion theory. This body of work provides an account of capacity-limited Bayesian reinforcement learning, a unifying normative framework for modeling the effect of processing constraints on learning and action selection. Here, we provide an accessible review of recent algorithms and theoretical results in this setting, paying special attention to how these ideas can be applied to studying questions in the cognitive and behavioral sciences.

Topics & Concepts

Reinforcement learningNormativeComputer scienceAction selectionCognitionArtificial intelligenceBayesian probabilityProcess (computing)Bayesian inferenceCognitive loadBridging (networking)Action (physics)Adaptation (eye)Cognitive scienceMachine learningPsychologyEpistemologyQuantum mechanicsOperating systemPhilosophyPerceptionPhysicsComputer networkNeuroscienceReinforcement Learning in RoboticsAdvanced Bandit Algorithms ResearchEvolutionary Algorithms and Applications
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