Test Where Decisions Matter: Importance-driven Testing for Deep Reinforcement Learning Bettina Könighofer
–Neural Information Processing Systems
In many Deep Reinforcement Learning (RL) problems, decisions in a trained policy vary in significance for the expected safety and performance of the policy. Since RL policies are very complex, testing efforts should concentrate on states in which the agent's decisions have the highest impact on the expected outcome. In this paper, we propose a novel model-based method to rigorously compute a ranking of state importance across the entire state space. We then focus our testing efforts on the highest-ranked states. In this paper, we focus on testing for safety. However, the proposed methods can be easily adapted to test for performance.
Neural Information Processing Systems
Mar-19-2025, 12:33:37 GMT