AI RESEARCH

Revisiting Mixture Policies in Entropy-Regularized Actor-Critic

arXiv CS.AI

ArXi:2605.09157v1 Announce Type: cross Mixture policies theoretically offer greater flexibility than unimodal policies in continuous action reinforcement learning, but the practical benefits of this complexity remain elusive. Mixture policies are notably absent from most state-of-the-art algorithms, raising a fundamental question: Is the added representational overhead useful? We show that increased flexibility can theoretically enhance solution quality and entropy robustness. Yet standard algorithms like SAC do not leverage these advantages.