Fuzzy clustering and subset feature weighting

H. Frigui, S.A. Salem
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引用次数: 13

Abstract

In this paper, we propose an algorithm that performs fuzzy clustering and feature weighting simultaneously and in an unsupervised manner. The feature set is divided into logical subsets of features, and a degree of relevance is dynamically assigned to each subset based on its partial degree of dissimilarity. The proposed algorithm is computationally and implementationally simple, and learns a different set of feature weights for each cluster. The cluster dependent feature weights have two advantages. First, they help in partitioning the data set into more meaningful clusters. Second, they can be used as part of a more complex learning system to enhance its learning behavior. The performance of the proposed algorithm is illustrated by using it to segment color images.
模糊聚类和子集特征加权
本文提出了一种以无监督方式同时进行模糊聚类和特征加权的算法。将特征集划分为特征的逻辑子集,并根据每个子集的部分不相似度动态分配相关程度。该算法计算和实现简单,并为每个聚类学习一组不同的特征权重。与聚类相关的特征权值有两个优点。首先,它们有助于将数据集划分为更有意义的集群。其次,它们可以作为更复杂的学习系统的一部分,以增强其学习行为。通过对彩色图像的分割,说明了该算法的性能。
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