Replacing Rewards with Examples: Example-Based Policy Search via Recursive Classification
–Neural Information Processing Systems
Reinforcement learning (RL) algorithms assume that users specify tasks by manually writing down a reward function. However, this process can be laborious and demands considerable technical expertise. Can we devise RL algorithms that instead enable users to specify tasks simply by providing examples of successful outcomes? In this paper, we derive a control algorithm that maximizes the future probability of these successful outcome examples. Prior work has approached similar problems with a two-stage process, first learning a reward function and then optimizing this reward function using another reinforcement learning algorithm.
Neural Information Processing Systems
Oct-10-2024, 17:07:43 GMT
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