JOURNAL ARTICLE

A Model-Based Factored Bayesian Reinforcement Learning Approach

Bo WuYan Peng FengHong Zheng

Year: 2014 Journal:   Applied Mechanics and Materials Vol: 513-517 Pages: 1092-1095   Publisher: Trans Tech Publications

Abstract

Bayesian reinforcement learning has turned out to be an effective solution to the optimal tradeoff between exploration and exploitation. However, in practical applications, the learning parameters with exponential growth are the main impediment for online planning and learning. To overcome this problem, we bring factored representations, model-based learning, and Bayesian reinforcement learning together in a new approach. Firstly, we exploit a factored representation to describe the states to reduce the size of learning parameters, and adopt Bayesian inference method to learn the unknown structure and parameters simultaneously. Then, we use an online point-based value iteration algorithm to plan and learn. The experimental results show that the proposed approach is an effective way for improving the learning efficiency in large-scale state spaces.

Keywords:
Reinforcement learning Computer science Bayesian inference Artificial intelligence Machine learning Inference Bayesian probability Exploit Representation (politics) Markov decision process Online learning Mathematics Markov process

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Physical Sciences →  Computer Science →  Artificial Intelligence
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