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Extracting rules from multilayer perceptrons in classification problems: A clustering-based approach

机译:从分类问题中的多层感知器中提取规则:一种基于聚类的方法

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Multilayer perceptrons adjust their internal parameters performing vector mappings from the input to the output space. Although they may achieve high classification accuracy, the knowledge acquired by such neural networks is usually incomprehensible for humans. This fact is a major obstacle in data mining applications, in which ultimately understandable patterns (like classification rules) are very important. Therefore, many algorithms for rule extraction from neural networks have been developed. This work presents a method to extract rules from multilayer perceptrons trained in classification problems. The rule extraction algorithm basically consists of two steps. First, a clustering genetic algorithm is applied to find clusters of hidden unit activation values. Then, classification rules describing these clusters, in relation to the inputs, are generated. The proposed approach is experimentally evaluated in four datasets that are benchmarks for data mining applications and in a real-world meteorological dataset, leading to interesting results.
机译:多层感知器调整其内部参数,以执行从输入到输出空间的矢量映射。尽管它们可以实现很高的分类精度,但是通过这种神经网络获得的知识通常对于人类来说是无法理解的。这个事实是数据挖掘应用程序中的主要障碍,在这种情况下,最终易于理解的模式(例如分类规则)非常重要。因此,已经开发了许多用于从神经网络提取规则的算法。这项工作提出了一种从经过分类问题训练的多层感知器中提取规则的方法。规则提取算法主要包括两个步骤。首先,应用聚类遗传算法查找隐藏单元激活值的聚类。然后,生成描述与输入有关的这些聚类的分类规则。在四个数据集(作为数据挖掘应用程序的基准)和现实世界的气象数据集中,对提出的方法进行了实验评估,从而得出了有趣的结果。

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