Refining membership degrees obtained from fuzzy C-means by re-fuzzification
(ندگان)پدیدآور
Javadian, M.Vaziri, R.Haghzad Klidbary, S.Malekzadeh, A.
نوع مدرک
TextResearch Paper
زبان مدرک
Englishچکیده
Fuzzy C-mean (FCM) is the most well-known and widely-used fuzzy clustering algorithm. However, one of the weaknesses of the FCM is the way it assigns membership degrees to data which is based on the distance to the cluster centers. Unfortunately, the membership degrees are determined without considering the shape and density of the clusters. In this paper, we propose an algorithm which takes the FCM clustering results and re-fuzzifies them by taking into account the shape and density of the clusters. The algorithm first defuzzifies the FCM clustering results. Then the crisp result is fuzzified again. Re-fuzzification in our algorithm has some advantages. The main advantage is that the fuzzy membership degrees of data points are obtained based on the shape and density of clusters. Adding the ability to eliminate noise and outlier data is the other advantage of our algorithm. Finally, our proposed re-fuzzification algorithm can slightly improve the FCM clustering quality, because the data points change their clusters according to similarity to the shape and density of their respective clusters. These advantages are supported by simulations on real and synthetic datasets.
کلید واژگان
Fuzzy c-meansFCM
re-fuzzification
F3CM
fuzzified FCM
Fuzzy clustering
KFCM
شماره نشریه
4تاریخ نشر
2020-08-011399-05-11
ناشر
University of Sistan and Baluchestanسازمان پدید آورنده
Department of Computer Engineering, Faculty of Information Technology, Kermanshah University of Technology, Kermanshah, IranIslamic Azad University Central Tehran Branch, Tehran, Iran
Department of Computer Engineering, Faculty of Engineering, University of Zanjan, Zanjan, Iran
Department of Computer Science and Statistics, Faculty of Mathematics, K.N. Toosi University of Technology, Tehran, Iran
شاپا
1735-06542676-4334



