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Combining One Class Fuzzy KNN's

机译:结合一类模糊KNN

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摘要

This paper introduces a parallel combination of N > 2 one class fuzzy KNN (FKNN) classifiers. The classifier combination consists of a new optimization procedure based on a genetic algorithm applied to FKNN's, that differ in the kind of similarity used. We tested the integration techniques in the case oi N = 5 similarities that have been recently introduced to face with categorical data sets. The assessment of the method has been carried out on two public data set, the Masquerading User Data and the badges database on the UCI Machine Learning Repository. Preliminary results show the better performance obtained by the fuzzy integration respect to the crisp one.
机译:本文介绍了N> 2个一类模糊KNN(FKNN)分类器的并行组合。分类器组合由基于应用于FKNN的遗传算法的新优化程序组成,所使用的相似性有所不同。在最近引入以面对分类数据集的N = 5个相似性的情况下,我们测试了集成技术。该方法的评估已在UCI机器学习存储库上的两个公共数据集,伪装用户数据和徽章数据库上进行。初步结果表明,相对于脆脆饼干,通过模糊积分可以获得更好的性能。

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