Title
Weighted Single-Pass Fuzzy c-Means Algorithm Based on Density Peaks
Abstract
This paper presents an improved single-pass fuzzy c-means algorithm, which is referred to as Weighted Single-Pass Fuzzy c-Means Algorithm Based on Density Peaks (dpwSPFCM). The classical clustering methods can deal with the small-scale data problems rather than the large-scale data problems. In addition, the traditional single-pass fuzzy c-means algorithm is sensitive to the order of input data. In the proposed algorithm, the samples are weighted and reordered according to the density peaks of the data. The dpwSPFCM combines data segmentation and sample weighting technique based on density characteristics, which contributes to getting better clustering results. Experimental results on several UCI datasets have shown that dpwSPFCM has better performance than several well-known algorithms, i.e., FCM, online FCM(OFCM) and single-pass FCM(SPFCM).
Year
DOI
Venue
2018
10.1109/tencon.2018.8650348
TENCON IEEE Region 10 Conference Proceedings
Keywords
Field
DocType
clustering,single-pass,FCM,weighted,density peaks
Single pass,Kernel (linear algebra),Approximation algorithm,Data segment,Weighting,Computer science,Fuzzy logic,Algorithm,Linear programming,Cluster analysis
Conference
ISSN
Citations 
PageRank 
2159-3442
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Yangyang Li120920.02
Qi Wang27340.49
Kun Ran300.34
Licheng Jiao45698475.84