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Fuzzy discriminant analysis with outlier detection by genetic algorithm

机译:遗传算法离群检测的模糊判别分析

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This paper proposes a method for performing fuzzy multiple discriminant analysis on groups of crisp data and determining the membership function of each group by minimizing the classification error using a genetic algorithm. Euclidean distance is used to measure the similarity between data points and defining membership functions. A numerical example is provided for illustration. The numerical example indicates that the classification obtained by fuzzy discriminant analysis is more satisfactory than that obtained by crisp discriminant analysis and is less fuzzy than that obtained by fuzzy cluster analysis. Moreover, the proposed fuzzy discriminant analysis is also a good approach to identifying outliers, of which the degree of membership to each group is zero.
机译:本文提出了一种对遗传数据进行模糊多判别分析并通过遗传算法使分类误差最小化来确定各组隶属度的方法。欧氏距离用于测量数据点之间的相似度并定义隶属度函数。提供了一个数字示例进行说明。数值例子表明,通过模糊判别分析获得的分类比通过明快判别分析获得的分类更令人满意,并且比通过模糊聚类分析获得的分类更不模糊。此外,所提出的模糊判别分析也是一种识别异常值的好方法,该异常值对每个组的隶属度为零。

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