AI RESEARCH

Dense and Diverse Goal Coverage in Multi Goal Reinforcement Learning

arXiv CS.AI

ArXi:2510.25311v2 Announce Type: replace-cross Reinforcement Learning algorithms are primarily focused on learning a policy that maximizes expected return. As a result, the learned policy can exploit one or few reward sources. However, in many natural situations, it is desirable to learn a policy that induces a dispersed marginal state distribution over rewarding states, while maximizing the expected return which is typically tied to reaching a goal state. This aspect remains relatively unexplored.