Semi-supervised possibilistic c-means clustering algorithm based on feature weights for imbalanced data

被引:10
|
作者
Yu, Haiyan [1 ]
Xu, Xiaoyu [1 ]
Li, Honglei [1 ]
Wu, Yuting [1 ]
Lei, Bo [1 ]
机构
[1] Xian Univ Posts & Telecommun, Sch Telecommun & Informat Engn, Xian 710121, Peoples R China
基金
中国国家自然科学基金;
关键词
Clustering; Possibilistic c -means clustering (PCM); Semi; -supervised; Feature weight; Imbalanced data; Image segmentation; MAHALANOBIS DISTANCE; FUZZY; ENTROPY;
D O I
10.1016/j.knosys.2024.111388
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The possibilistic c-means clustering (PCM) algorithm improves the robustness of fuzzy c-means clustering (FCM) to noise and outliers by releasing the probabilistic constraint of memberships. The semi-supervised possibilistic cmeans clustering (SSPCM) algorithm improves the clustering effect on datasets with imbalanced sizes by introducing a small amount of label information. However, the traditional semi-supervised algorithm still faces the problem of low utilization of supervision information for datasets with large differences in sample sizes. Moreover, the Euclidean distance, which treats features equally, cannot handle feature-imbalanced data. Therefore, this paper proposes a semi-supervised possibilistic c-means clustering algorithm based on feature weights (FW-SSPCM) by introducing the ideas of supervised centers. First, the algorithm introduces the supervised center into the objective function of the SSPCM to improve the utilization rate of supervision information and thus guide the center iteration of small clusters. Second, the feature weighting strategy is introduced in the objective function to adaptively assign feature weights according to the importance of different features in different clusters, thus improving the adaptability of the algorithm to feature-imbalanced datasets. In addition, to improve the robustness of the antinoise effect and retain additional image details, a new image segmentation algorithm based on FW-SSPCM and local information (LFW-SSPCM) is proposed by introducing local spatial information obtained by bilateral filtering. Finally, through clustering experiments on synthetic data, UCI datasets and on color images characteristic of multiple features, including imbalanced sizes, imbalanced features and strong noise injection, the clustering performances of the proposed FW-SSPCM and LFW-SSPCM proposed in this paper are significantly better than those of several related clustering algorithms.
引用
收藏
页数:37
相关论文
共 50 条
  • [21] SPCM: Efficient semi-possibilistic c-means clustering algorithm
    Mahfouz, Mohamed A.
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2022, 43 (06) : 7227 - 7241
  • [22] Semi-Supervised Fuzzy c-Means Algorithm by Revising Dissimilarity Between Data
    Kanzawa, Yuchi
    Endo, Yasunori
    Miyamoto, Sadaaki
    JOURNAL OF ADVANCED COMPUTATIONAL INTELLIGENCE AND INTELLIGENT INFORMATICS, 2011, 15 (01) : 95 - 101
  • [23] On semi-supervised fuzzy c-means clustering for data with clusterwise tolerance by opposite criteria
    Yukihiro Hamasuna
    Yasunori Endo
    Soft Computing, 2013, 17 : 71 - 81
  • [24] Suppressed possibilistic c-means clustering algorithm
    Yu, Haiyan
    Fan, Jiulun
    Lan, Rong
    APPLIED SOFT COMPUTING, 2019, 80 : 845 - 872
  • [25] On semi-supervised fuzzy c-means clustering for data with clusterwise tolerance by opposite criteria
    Hamasuna, Yukihiro
    Endo, Yasunori
    SOFT COMPUTING, 2013, 17 (01) : 71 - 81
  • [26] A possibilistic fuzzy c-means clustering algorithm
    Pal, NR
    Pal, K
    Keller, JM
    Bezdek, JC
    IEEE TRANSACTIONS ON FUZZY SYSTEMS, 2005, 13 (04) : 517 - 530
  • [27] Robust Semi-Supervised Fuzzy C-Means Clustering for Time Series
    Xu, Jiucheng
    Hou, Qinchen
    Qu, Kanglin
    Sun, Yuanhao
    Meng, Xiangru
    Computer Engineering and Applications, 2023, 59 (08): : 73 - 80
  • [28] Effects of Semi-supervised Learning on Rough Membership C-Means Clustering
    Shimizu, Takeaki
    Ubukata, Seiki
    Notsu, Akira
    Honda, Katsuhiro
    2019 INTERNATIONAL CONFERENCE ON FUZZY THEORY AND ITS APPLICATIONS (IFUZZY), 2019, : 15 - 20
  • [29] A possibilistic C-means clustering algorithm based on kernel methods
    Wu, Xiao-Hong
    2006 INTERNATIONAL CONFERENCE ON COMMUNICATIONS, CIRCUITS AND SYSTEMS PROCEEDINGS, VOLS 1-4: VOL 1: SIGNAL PROCESSING, 2006, : 2062 - 2066
  • [30] A Novel Semi-Supervised Fuzzy C-Means Clustering Algorithm Using Multiple Fuzzification Coefficients
    Tran Dinh Khang
    Manh-Kien Tran
    Fowler, Michael
    ALGORITHMS, 2021, 14 (09)