AI RESEARCH

Rationality Measurement and Theory for Reinforcement Learning Agents

arXiv CS.LG

ArXi:2602.04737v2 Announce Type: replace This paper proposes a suite of rationality measures and associated theory for reinforcement learning agents, a property increasingly critical yet rarely explored. We define an action in deployment to be perfectly rational if it maximises the hidden true value function in the steepest direction. The expected value discrepancy of a policy's actions against their rational counterparts, culminating over the trajectory in deployment, is defined to be expected rational risk; an empirical average version in.