Poster
in
Workshop: Deep Reinforcement Learning
The Effects of Reward Misspecification: Mapping and Mitigating Misaligned Models
Alexander Pan · Kush Bhatia · Jacob Steinhardt
Reward hacking---where RL agents exploit gaps in misspecified proxy rewards---has been widely observed, but not yet systematically studied. To understand reward hacking, we construct four RL environments with different misspecified rewards. We investigate reward hacking as a function of agent capabilities: model capacity, action space resolution, and observation space noise. Typically, more capable agents are able to better exploit reward misspecifications, causing them to attain higher proxy reward and lower true reward. Moreover, we find instances of \emph{phase transitions}: capability thresholds at which the agent's behavior qualitatively shifts, leading to a sharp decrease in the true reward. Such phase transitions pose challenges to monitoring the safety of ML systems. To encourage further research on reward misspecification, we propose an anomaly detection task for aberrant policies and offer several baseline detectors.