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Near-Optimal BRL using Optimistic Local Transitions
- Publication Year :
- 2012
-
Abstract
- Model-based Bayesian Reinforcement Learning (BRL) allows a found formalization of the problem of acting optimally while facing an unknown environment, i.e., avoiding the exploration-exploitation dilemma. However, algorithms explicitly addressing BRL suffer from such a combinatorial explosion that a large body of work relies on heuristic algorithms. This paper introduces BOLT, a simple and (almost) deterministic heuristic algorithm for BRL which is optimistic about the transition function. We analyze BOLT's sample complexity, and show that under certain parameters, the algorithm is near-optimal in the Bayesian sense with high probability. Then, experimental results highlight the key differences of this method compared to previous work.<br />Comment: ICML2012
Details
- Database :
- arXiv
- Publication Type :
- Report
- Accession number :
- edsarx.1206.4613
- Document Type :
- Working Paper