Inverse Reinforcement Learning with Switching Rewards and History Dependency for Characterizing Animal Behaviors
Jingyang Ke, Feiyang Wu, Jiyi Wang, Jeffrey Markowitz, Anqi Wu

TL;DR
This paper introduces SWIRL, a novel inverse reinforcement learning framework that models animal decision-making by incorporating history-dependent rewards and switching behaviors, enabling better understanding of complex natural behaviors.
Contribution
SWIRL extends traditional IRL by integrating history-dependent reward functions and modeling long-term, switching behavioral strategies in animals.
Findings
SWIRL outperforms existing models in simulated datasets.
SWIRL accurately captures long-term behavioral sequences.
Application to real animal data demonstrates improved behavioral characterization.
Abstract
Traditional approaches to studying decision-making in neuroscience focus on simplified behavioral tasks where animals perform repetitive, stereotyped actions to receive explicit rewards. While informative, these methods constrain our understanding of decision-making to short timescale behaviors driven by explicit goals. In natural environments, animals exhibit more complex, long-term behaviors driven by intrinsic motivations that are often unobservable. Recent works in time-varying inverse reinforcement learning (IRL) aim to capture shifting motivations in long-term, freely moving behaviors. However, a crucial challenge remains: animals make decisions based on their history, not just their current state. To address this, we introduce SWIRL (SWitching IRL), a novel framework that extends traditional IRL by incorporating time-varying, history-dependent reward functions. SWIRL models long…
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Taxonomy
TopicsReinforcement Learning in Robotics · Evolutionary Algorithms and Applications · Animal Behavior and Welfare Studies
MethodsFocus
