Skip to yearly menu bar Skip to main content


Poster
in
Workshop: The Many Facets of Preference-Based Learning

Rating-based Reinforcement Learning

Devin White · Mingkang Wu · Ellen Novoseller · Vernon Lawhern · Nicholas Waytowich · Yongcan Cao


Abstract:

This paper develops a novel rating-based reinforcement learning approach that uses human ratings to obtain human guidance in reinforcement learning. Different from the existing preference-based and ranking-based reinforcement learning paradigms, based on human relative preferences over sample pairs, the proposed rating-based reinforcement learning approach is based on human evaluation of individual trajectories without relative comparisons between sample pairs. The rating-based reinforcement learning approach builds on a new prediction model for human ratings and a novel multi-class loss function. We conduct several experiment studies based on synthetic ratings and real human ratings to evaluate the effectiveness and benefits of the new rating-based reinforcement learning approach.

Chat is not available.