AI RESEARCH
Blazing the trails before beating the path: Sample-efficient Monte-Carlo planning
arXiv CS.LG
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ArXi:2604.14974v1 Announce Type: new You are a robot and you live in a Marko decision process (MDP) with a finite or an infinite number of transitions from state-action to next states. You got brains and so you plan before you act. Luckily, your roboparents equipped you with a generative model to do some Monte-Carlo planning. The world is waiting for you and you have no time to waste. You want your planning to be efficient. Sample-efficient. Indeed, you want to exploit the possible structure of the MDP by exploring only a subset of states reachable by following near-optimal policies.