A Method to Point Out Anomalous Input-Output Patterns in a Database for Training Neuro-Fuzzy System with a Supervised Learning Rule

V. Colla, N. Matarese, L. Reyneri
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引用次数: 8

Abstract

When designing a neural or fuzzy system, a careful preprocessing of the database is of utmost importance in order to produce a trustable system. In function approximation applications, when a functional relationship between input and output variables is supposed to exist, the presence of data where the similar set of input variables is associated to very different values of the output is not always beneficial for the final system to design. A method is presented which can be used to detect anomalous data, namely non-coherent associations between input and output patterns. This technique, by mean of a comparison between two distance matrix associated to the input and output patterns, is able to detect elements in a dataset, where similar values of input variables are associated to quite different output values. A numerical example and a more complex application in the pre-processing of data coming from an industrial database were presented.
一种基于监督学习规则的神经模糊系统异常输入输出模式识别方法
在设计一个神经系统或模糊系统时,为了产生一个可信的系统,对数据库进行仔细的预处理是至关重要的。在函数近似应用中,当假定存在输入和输出变量之间的函数关系时,类似的输入变量集与非常不同的输出值相关联的数据的存在并不总是有利于最终系统的设计。提出了一种用于检测异常数据的方法,即输入和输出模式之间的非相干关联。该技术通过比较与输入和输出模式相关联的两个距离矩阵,能够检测数据集中的元素,其中输入变量的相似值与完全不同的输出值相关联。最后给出了一个数值实例以及在工业数据库数据预处理中的一个更复杂的应用。
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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