Modeling and Clustering of Parabolic Granular Data

被引:0
|
作者
Tang Y. [1 ,2 ]
Gao J. [3 ]
Pedrycz W. [4 ,5 ,6 ]
Hu X. [7 ]
Xi L. [3 ]
Ren F. [8 ]
Hu M. [3 ]
机构
[1] Hefei University of Technology, Anhui Province Key Laboratory of Affective Computing and Advanced Intelligent Machine, School of Computer and Information, Hefei
[2] University of Alberta, Department of Electrical and Computer Engineering, Edmonton, T6R 2V4, AB
[3] Hefei University of Technology, School of Computer and Information, Hefei
[4] University of Alberta, Department of Electrical and Computer Engineering, Edmonton, T6G 2R3, AB
[5] Polish Academy of Sciences, Systems Research Institute, Warsaw
[6] Istinye University, Research Center of Performance and Productivity Analysis, Istanbul
[7] Southeast University, School of Computer Science and Engineering, Nanjing
[8] University of Electronic Science and Technology of China, School of Computer Science and Engineering, Sichuan, Chengdu
来源
关键词
Clustering; fuzzy clustering; fuzzy set theory; granular computing (GRC); unsupervised learning;
D O I
10.1109/TAI.2024.3377172
中图分类号
学科分类号
摘要
At present, there exist some problems in granular clustering methods, such as lack of nonlinear membership description and global optimization of granular data boundaries. To address these issues, in this study, revolving around the parabolic granular data, we propose an overall architecture for parabolic granular modeling and clustering. To begin with, novel coverage and specificity functions are established, and then a parabolic granular data structure is proposed. The fuzzy c-means (FCM) algorithm is used to obtain the numeric prototypes, and then particle swarm optimization (PSO) is introduced to construct the parabolic granular data from the global perspective under the guidance of principle of justifiable granularity (PJG). Combining the advantages of FCM and PSO, we propose the parabolic granular modeling and optimization (PGMO) method. Moreover, we put forward attribute weights and sample weights as well as a distance measure induced by the Gaussian kernel similarity, and then come up with the algorithm of weighted kernel fuzzy clustering for parabolic granularity (WKFC-PG). In addition, the assessment mechanism of parabolic granular clustering is discussed. In summary, we set up an overall architecture including parabolic granular modeling, clustering, and assessment. Finally, comparative experiments on artificial, UCI, and high-dimensional datasets validate that our overall architecture delivers a good improvement over previous strategies. The parameter analysis and time complexity are also given for WKFC-PG. In contrast with related granular clustering algorithms, it is observed that WKFC-PG performs better than other granular clustering algorithms and has superior stability in handling outliers, especially on high-dimensional datasets. © 2020 IEEE.
引用
收藏
页码:3728 / 3742
页数:14
相关论文
共 50 条
  • [31] Data mining and machine oriented modeling: A granular computing approach
    Lin, TY
    APPLIED INTELLIGENCE, 2000, 13 (02) : 113 - 124
  • [32] Rupture and clustering in granular streams
    Royer, John R.
    Oyarte, Loreto
    Moebius, Matthias E.
    Jaeger, Heinrich M.
    CHAOS, 2009, 19 (04)
  • [33] CLUSTERING WITH GRANULAR INFORMATION PROCESSING
    Kuzelewska, Urszula
    ICAART 2011: PROCEEDINGS OF THE 3RD INTERNATIONAL CONFERENCE ON AGENTS AND ARTIFICIAL INTELLIGENCE, VOL 1, 2011, : 89 - 97
  • [34] Modeling Over-dispersion for Network Data Clustering
    Wang, Lu
    Zhu, Dongxiao
    Li, Yan
    Dong, Ming
    2017 16TH IEEE INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA), 2017, : 42 - 49
  • [35] On the Existence of Optimal Unions of Subspaces for Data Modeling and Clustering
    Akram Aldroubi
    Romain Tessera
    Foundations of Computational Mathematics, 2011, 11 : 363 - 379
  • [36] On the Existence of Optimal Unions of Subspaces for Data Modeling and Clustering
    Aldroubi, Akram
    Tessera, Romain
    FOUNDATIONS OF COMPUTATIONAL MATHEMATICS, 2011, 11 (03) : 363 - 379
  • [37] From Data to Granular Data and Granular Classifiers
    Al-Hmouz, Rami
    Pedrycz, Witold
    Balamash, Abdullah
    Morfeq, Ali
    2014 IEEE INTERNATIONAL CONFERENCE ON FUZZY SYSTEMS (FUZZ-IEEE), 2014, : 432 - 438
  • [38] Granular Algebra for Modeling Granular Systems and Granular Computing
    Wang, Yingxu
    PROCEEDINGS OF THE 8TH IEEE INTERNATIONAL CONFERENCE ON COGNITIVE INFORMATICS, 2009, : 145 - 154
  • [39] Granular computing for binary relations: Clustering and axiomatic granular operators
    Lin, TT
    NAFIPS 2004: ANNUAL MEETING OF THE NORTH AMERICAN FUZZY INFORMATION PROCESSING SOCIETY, VOLS 1AND 2: FUZZY SETS IN THE HEART OF THE CANADIAN ROCKIES, 2004, : 430 - 433
  • [40] GBCT: Efficient and Adaptive Clustering via Granular-Ball Computing for Complex Data
    Xia, Shuyin
    Shi, Bolun
    Wang, Yifan
    Xie, Jiang
    Wang, Guoyin
    Gao, Xinbo
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2025,