Adaptive action selection using utility-based reinforcement learning

Kunrong Chen, Fen Lin, Qing Tan, Zhongzhi Shi
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引用次数: 6

Abstract

A basic problem of intelligent systems is choosing adaptive action to perform in a non-stationary environment. Due to the combinatorial complexity of actions, agent cannot possibly consider every option available to it at every instant in time. It needs to find good policies that dictate optimum actions to perform in each situation. This paper proposes an algorithm, called UQ-learning, to better solve action selection problem by using reinforcement learning and utility function. Reinforcement learning can provide the information of environment and utility function is used to balance Exploration-Exploitation dilemma. We implement our method with maze navigation tasks in a non-stationary environment. The results of simulated experiments show that utility-based reinforcement learning approach is more effective and efficient compared with Q-learning and Recency-Based Exploration.
使用基于效用的强化学习的自适应行动选择
智能系统的一个基本问题是在非稳态环境中选择自适应动作。由于行为的组合复杂性,智能体不可能在每一个时刻都考虑到所有的选择。它需要找到好的策略,规定在每种情况下执行的最佳行动。本文提出了一种名为UQ-learning的算法,利用强化学习和效用函数来更好地解决行动选择问题。强化学习可以提供环境信息,利用效用函数平衡探索-利用困境。我们将该方法应用于非静态环境中的迷宫导航任务。仿真实验结果表明,基于效用的强化学习方法比Q-learning和基于最近的探索方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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