A Self-Adaptive Weighted Fuzzy c-Means for Mixed-Type Data

Min Ren, Zhihao Wang, Guangfen Yang
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引用次数: 1

Abstract

The influence of features on each cluster is not the same in a mixed-type dataset. Based on the rough set and shadow set theories, the fuzzy distribution centroid was defined to represent the clustering center of the discrete feature so that the fuzzy c-means algorithm (FCM) could be extended to cluster the data with both continuous and discrete features. Then, considering the different contributions of the features to each cluster, a new weighted objective function was constructed in accordance with the principles of fuzzy compactness and separation. Because the learning feature weight is the key step in feature-weighted FCM, this paper regarded the feature weight as a variable optimized in the clustering process and put forward a self-adaptive mixed-type weighted FCM. The experimental results showed that the algorithm could be effectively applied to a heterogeneous mixed-type dataset.
混合类型数据的自适应加权模糊c均值
在混合类型数据集中,特征对每个聚类的影响是不一样的。基于粗糙集和阴影集理论,定义了模糊分布质心来表示离散特征的聚类中心,从而将模糊c均值算法扩展到对具有连续和离散特征的数据进行聚类。然后,考虑特征对每个聚类的不同贡献,根据模糊紧密性和分离性原则构造新的加权目标函数;由于特征权值的学习是特征加权FCM的关键步骤,本文将特征权值作为聚类过程中优化的变量,提出了一种自适应混合型加权FCM。实验结果表明,该算法可以有效地应用于异构混合类型数据集。
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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