AI RESEARCH

CIG: Exploration via Conditional Information Gain

arXiv CS.LG

ArXi:2605.20878v1 Announce Type: new Intrinsic rewards for exploration in reinforcement learning condition on different contexts: lifelong rewards score each transition against accumulated experience but ignore within-rollout redundancy; episodic rewards penalize intra-trajectory repetition but discard lifetime progress. Hybrid methods combine both signals through heuristic weights or require Gaussian-process dynamics that do not scale beyond low-dimensional state spaces.