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Reinforcement learning combined with a fuzzy adaptive learning control network (FALCON-R) for pattern classification

机译:强化学习结合模糊自适应学习控制网络(FALCON-R)进行模式分类

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摘要

Reinforcement learning has been widely-used for applications in planning. control. and decision making. Rather than using instructive feedback as in supervised learning. reinforcement learning makes use of evaluative feedback to guide the learning process. In this paper, we formulate a pattern classification problem as a reinforcement learning problem. The problem is realized with a temporal difference method in a FALCON-R network. FALCON-R is constructed by integrating two basic FALCON-ART networks as function approximators, where one acts as a critic network (fuzzy predictor) and the other as an action network (fuzzy controller). This paper serves as a guideline in formulating a classification problem as a reinforcement learning problem using FALCON-R. The strengths of applying the reinforcement learning method to the pattern classification application are demonstrated. We show that such a system can converge faster. is able to escape from local minima. and has excellent disturbance rejection capability. (C) 2004 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:强化学习已广泛用于计划中的应用程序。控制。和决策。而不是像监督学习那样使用指导性反馈。强化学习利用评估反馈来指导学习过程。在本文中,我们将模式分类问题表述为强化学习问题。该问题是通过FALCON-R网络中的时间差方法实现的。 FALCON-R是通过将两个基本的FALCON-ART网络集成为函数逼近器而构建的,其中一个充当评论者网络(模糊预测器),另一个充当行动网络(模糊控制器)。本文作为使用FALCON-R将分类问题表述为强化学习问题的指南。演示了将强化学习方法应用于模式分类应用的优势。我们证明了这样的系统可以收敛得更快。能够摆脱当地的最低要求。具有优良的抗干扰能力。 (C)2004模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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