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Title
SSFCM-FWCW: Semi-Supervised Fuzzy C-Means method based on Feature-Weight and Cluster-Weight learning
Type of Research Article
Keywords
Fuzzy c-means Semi-supervised clustering Feature weighting Cluster weighting
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.
Researchers Amin Golzari Oskouei (First Researcher)، Negin Samadi (Second Researcher)، Jafar Tanha (Third Researcher)، Asgarali Bouyer (Fourth Researcher)