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Pattern classification using fuzzy adaptive learning control network and reinforcement learning

机译:基于模糊自适应学习控制网络和强化学习的模式分类

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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 fuzzy adaptive learning control network (FALCON-R). 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). Thorough performance evaluation using Fisher's Iris data is presented and compared against a novel FALCON-ART network. We show that the system can converge faster, is able to escape from local minima, and has excellent disturbance rejection capability and has strengths as a pattern classification technique.
机译:在本文中,我们将模式分类问题表述为强化学习问题。该问题是通过模糊自适应学习控制网络(FALCON-R)中的时间差异方法实现的。 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,其中一个充当批评者网络(模糊预测器),另一个充当行动网络(模糊控制器)。提出了使用Fisher的Iris数据进行的全面性能评估,并将其与新型FALCON-ART网络进行了比较。我们表明,该系统收敛速度更快,能够摆脱局部极小值,并且具有出色的抗干扰能力,并且具有作为模式分类技术的优势。

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