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Discovering Options for Exploration by Minimizing Cover Time

Authors :
Jinnai, Yuu
Park, Jee Won
Abel, David
Konidaris, George
Publication Year :
2019

Abstract

One of the main challenges in reinforcement learning is solving tasks with sparse reward. We show that the difficulty of discovering a distant rewarding state in an MDP is bounded by the expected cover time of a random walk over the graph induced by the MDP's transition dynamics. We therefore propose to accelerate exploration by constructing options that minimize cover time. The proposed algorithm finds an option which provably diminishes the expected number of steps to visit every state in the state space by a uniform random walk. We show empirically that the proposed algorithm improves the learning time in several domains with sparse rewards.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1903.00606
Document Type :
Working Paper