Improvement of FCM neural network classifier using K-Medoids clustering

Xiaoqian Zhang, Bo Yang, Lin Wang, Zhifeng Liang, A. Abraham
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引用次数: 2

Abstract

Floating Centroids Method (FCM) is a new method to improve the performance of neural network classifier. But the K-Means clustering algorithm used in FCM is sensitive to outliers. So this weakness will influence the performance of classifier to a certain extent. In this paper, K-Medoids clustering algorithm which can diminish the sensitivity to the outliers is used to partition the mapping points into some disjoint subsets to improve FCM's robustness and performance. Some data sets from UCI Machine Learning Repository are employed in our experiments. The results show a better performance for the FCM using our improved method.
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基于k - mediids聚类的FCM神经网络分类器改进
浮动质心方法是一种提高神经网络分类器性能的新方法。但在FCM中使用的k均值聚类算法对异常值比较敏感。所以这个缺点会在一定程度上影响分类器的性能。为了提高FCM的鲁棒性和性能,本文采用K-Medoids聚类算法将映射点划分为不相交的子集,从而降低对离群点的敏感性。我们的实验使用了UCI机器学习存储库中的一些数据集。结果表明,改进后的FCM具有更好的性能。
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