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Knowledge Extraction From Neural Networks Using the All-Permutations Fuzzy Rule Base: The LED Display Recognition Problem

机译:使用全排列模糊规则库从神经网络中提取知识:LED显示识别问题

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摘要

A major drawback of artificial neural networks (ANNs) is their black-box character. Even when the trained network performs adequately, it is very difficult to understand its operation. In this letter, we use the mathematical equivalence between ANNs and a specific fuzzy rule base to extract the knowledge embedded in the network. We demonstrate this using a benchmark problem: the recognition of digits produced by a light emitting diode (LED) device. The method provides a symbolic and comprehensible description of the knowledge learned by the network during its training
机译:人工神经网络(ANN)的主要缺点是其黑盒特性。即使受过训练的网络表现良好,也很难理解其操作。在这封信中,我们使用ANN之间的数学等价关系和特定的模糊规则库来提取嵌入在网络中的知识。我们使用一个基准问题来演示此问题:识别由发光二极管(LED)设备产生的数字。该方法提供了对网络在训练过程中所学知识的象征性和可理解的描述

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