The Construction of Cascaded Features and Its Application in Fuzzy Clustering

Yin-Ping Zhao, Long Chen, C. L. P. Chen
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Abstract

The success of fuzzy clustering heavily relies on the proper feature space constructed by the input data. For nonspherical and overlapped clusters, kernel fuzzy clustering is more effective owing to it finds more proper feature space compared to conventional fuzzy clustering. Unfortunately, poor scalability of kernel fuzzy clustering is induced by the requirement of large memory and running time. To solve the problem, random feature based method was presented to approximate the kernel function. Features in this approximate feature space are very useful information. Inspired by the architecture of functional-link neural network, to represent the diversity of features, cascaded features are constructed by a new feature mapping technique called cascaded feature mapping in this paper. By performing classical fuzzy c-means (FCM) with the cascaded features, a new fuzzy clustering algorithm called FCM-CF is developed. The experimental results of our proposed methods verify the superiority in comparison of other classical fuzzy clustering methods.
级联特征的构造及其在模糊聚类中的应用
模糊聚类的成功与否很大程度上依赖于输入数据构造的合适的特征空间。对于非球形和重叠的聚类,核模糊聚类比常规模糊聚类找到了更多合适的特征空间,因此聚类效果更好。然而,由于对内存和运行时间的要求,导致内核模糊聚类的可扩展性较差。为了解决这一问题,提出了基于随机特征的核函数近似方法。这个近似特征空间中的特征是非常有用的信息。受功能链接神经网络结构的启发,本文采用一种新的特征映射技术——级联特征映射来构造级联特征,以表示特征的多样性。通过对级联特征进行经典模糊c均值(FCM)分析,提出了一种新的模糊聚类算法FCM- cf。实验结果验证了该方法与其他经典模糊聚类方法的优越性。
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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