AI RESEARCH
Self-Supervised On-Policy Reinforcement Learning via Contrastive Proximal Policy Optimisation
arXiv CS.AI
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ArXi:2605.13554v1 Announce Type: cross Contrastive reinforcement learning (CRL) learns goal-conditioned Q-values through a contrastive objective over state-action and goal representations, removing the need for hand-crafted reward functions. Despite impressive success in achieving viable self-supervised learning in RL, all existing CRL algorithms rely on off-policy optimisation and are mostly constrained to continuous action spaces, with little research invested in discrete environments. This leaves CRL disconnected from widely used and effective, modern on-policy.