SSFCM-FWCW: Semi-Supervised Fuzzy C-Means method based on Feature-Weight and Cluster-Weight learning

IF 1.3 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Amin Golzari Oskouei , Negin Samadi , Jafar Tanha , Asgarali Bouyer
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引用次数: 0

Abstract

SSFCM-FWCW (Feature-Weight and Cluster-Weight based Semi-Supervised Fuzzy C-Means) is a soft clustering method. It incorporates supplementary label information to enhance the clustering quality. An adaptive local feature weighting technique is utilized to weight features based on their significance within specific clusters. Additionally, an adaptive weighting technique is applied to diminish the sensitivity to the initial center selection, effectively distinguishing between the effects of various clusters. The conjunction of label information and adaptive weighting results in an optimal fuzzy c-means clustering with an insight into the importance of individual features and clusters. An open-source Matlab implementation of SSFCM-FWCW is available.

SSFCM-FWCW:基于特征-权值和聚类-权值学习的半监督模糊 C-Means 方法
SSFCM-FWCW(基于特征-权值和聚类-权值的半监督模糊 C-Means 方法)是一种软聚类方法。它结合了补充标签信息来提高聚类质量。它采用自适应局部特征加权技术,根据特征在特定聚类中的重要性对其进行加权。此外,自适应加权技术还能降低对初始中心选择的敏感度,有效区分不同聚类的影响。将标签信息和自适应加权结合起来,就能实现最佳的模糊 c-means 聚类,并深入了解各个特征和聚类的重要性。SSFCM-FWCW 的开源 Matlab 实现已经发布。
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来源期刊
Software Impacts
Software Impacts Software
CiteScore
2.70
自引率
9.50%
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0
审稿时长
16 days
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