IEICE Transactions on Information and Systems
Online ISSN : 1745-1361
Print ISSN : 0916-8532
Regular Section
A Study of Qualitative Knowledge-Based Exploration for Continuous Deep Reinforcement Learning
Chenxi LILei CAOXiaoming LIUXiliang CHENZhixiong XUYongliang ZHANG
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2017 Volume E100.D Issue 11 Pages 2721-2724

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Abstract

As an important method to solve sequential decision-making problems, reinforcement learning learns the policy of tasks through the interaction with environment. But it has difficulties scaling to large-scale problems. One of the reasons is the exploration and exploitation dilemma which may lead to inefficient learning. We present an approach that addresses this shortcoming by introducing qualitative knowledge into reinforcement learning using cloud control systems to represent ‘if-then’ rules. We use it as the heuristics exploration strategy to guide the action selection in deep reinforcement learning. Empirical evaluation results show that our approach can make significant improvement in the learning process.

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© 2017 The Institute of Electronics, Information and Communication Engineers
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