Signatures of reinforcement learning in natural behavior.
Catherine A Hartley, Susan L Benear, Aaron S Heller
Abstract
Open AccessAcross myriad, real-world contexts, we encounter the challenge of learning to take actions that bring about desirable outcomes. The theoretical framework of reinforcement learning proposes formal algorithms through which agents learn from experience to make rewarding choices. These formal models capture many aspects of reward-guided human behavior in controlled laboratory contexts. Here, we suggest that the constructs (i.e., states, actions, and rewards) and algorithms formalized within reinforcement learning theory can be operationally defined and extended to additionally account for learning in complex, natural environments. We discuss several recent examples of empirical studies that provide evidence of signatures of reinforcement learning across diverse human behaviors in everyday environments.