Clustering of Triangular Fuzzy Data based on Heuristic Methods

Publish Year: 1403
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:

JR_JECEI-12-1_001

تاریخ نمایه سازی: 5 دی 1402

Abstract:

kground and Objectives: In this paper, a new version of the particle swarm optimization (PSO) algorithm using a linear ranking function is proposed for clustering uncertain data. In the proposed Uncertain Particle Swarm Clustering method, called UPSC method, triangular fuzzy numbers (TFNs) are used to represent uncertain data. Triangular fuzzy numbers are a good type of fuzzy numbers and have many applications in the real world.Methods: In the UPSC method input data are fuzzy numbers. Therefore, to upgrade the standard version of PSO, calculating the distance between the fuzzy numbers is necessary. For this purpose, a linear ranking function is applied in the fitness function of the PSO algorithm to describe the distance between fuzzy vectors. Results: The performance of the UPSC is tested on six artificial and nine benchmark datasets. The features of these datasets are represented by TFNs.Conclusion: The experimental results on fuzzy artificial datasets show that the proposed clustering method (UPSC) can cluster fuzzy datasets like or superior to other standard uncertain data clustering methods such as Uncertain K-Means Clustering (UK-means) and Uncertain K-Medoids Clustering (UK-medoids) algorithms. Also, the experimental results on fuzzy benchmark datasets demonstrate that in all datasets except Libras, the UPSC method provides better results in accuracy when compared to other methods. For example, in iris data, the clustering accuracy has increased by ۲.۶۷% compared to the UK-means method. In the case of wine data, the accuracy increased with the UPSC method is ۱.۶۹%. As another example, it can be said that the increase in accuracy for abalone data was ۴%. Comparing the results with the rand index (RI) also shows the superiority of the proposed clustering method.

Authors

N. Ghanbari

Department of Electrical Engineering, Faculty of Engineering, University of Birjand, Birjand, Iran.

S. H. Zahiri

Department of Electrical and Computer Engineering, University of Birjand, Birjand, Iran.

H. Shahraki

Department of Computer Engineering, Faculty of Industry and Mining, University of Sistan and Baluchestan, Zahedan, Iran.

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  • A. Dutt, M. A. Ismail, T. Herawan, “A systematic review ...
  • Z. Wang “Determining the clustering centers by slope difference distribution,” ...
  • T. T. Zhang, B. Yuan, “Density-based multiscale analysis for clustering ...
  • P. N. Tan, M. Steinbach, V. Kumar, “Introduction to datamining,” ...
  • H. Shahraki, S. H. Zahiri, “Classification of trapezoidal fuzzy data ...
  • F. Gullo, “An information-theoretic approach to hierarchical clustering of uncertain ...
  • Y. Mao, Y. Liu, M.A. Khan, J. Wang, D. Mao, ...
  • L. Yue, L. Zitu, L. Shuang, G. Yike, L. Qun, W. Guoyin, “Cloud-Cluster: An uncertainty ...
  • G. S. Nijaguna, K. Thippeswamy, “Multiple kernel fuzzy clustering for ...
  • C. Ko, J. Baek, B. Tavakkol, Y. S. Jeong, “Cluster ...
  • J. Zhou, L. Chen, C. L. Philip Chen, Y. Wang, ...
  • H. Shahraki, S. H. Zahiri, “Fuzzy decision function estimation using ...
  • R. M.C.R. de Souza, F. de A.T. de Carvalho, “Clustering ...
  • F. de A.T. de Carvalho, R. M.C.R. de Souza, M. ...
  • X. Zhang, H. Liu, X. Zhang, “Novel density-based and hierarchical ...
  • J. Tayyebi, E. Hosseinzadeh, “A fuzzy c-means algorithm for clustering ...
  • R. Adrian, S. Sulistyo, I.W. Mustika, S. Alam, “ABNC: Adaptive ...
  • T. P. Q. Nguyen, R. J. Kuo, “Partition-and-merge based fuzzy ...
  • I. Behravan, S. H. Zahiri, S. M. Razavi, R. Trasarti, ...
  • Z. Liu, B. Xiang, Y. Song, H. Lu, Q. Liu, ...
  • B. Anari, J. Akbari torkestani, A. M. Rahmani, “A learning ...
  • M. S. Tomar, P. K. Shukla, “Energy efficient gravitational search ...
  • H. Mittal, M. Saraswat, “An automatic nuclei segmentation method using ...
  • J. Kennedy, R. C. Eberhart, “Particle swarm optimization,” in Proc. ...
  • W. Xiong, “Initial clustering based on the swarm intelligence algorithm ...
  • D. W. Van der Merwe, A. P. Engelbrecht, “Data clustering ...
  • R. E. Bellman, L. A. Zadeh, “Decision making in a ...
  • H. Tanaka, H. Ichihashi, “A formulation of fuzzy linear programming ...
  • Y.J. Lai, C.L. Hwang, “Fuzzy mathematical programming methods and applications,” ...
  • S. C. Fang, C. F. Hu, H. F. Wang, S. ...
  • T. Shaocheng, “Interval number and fuzzy number linear programming,” Fuzzy ...
  • C. Garcia-Aguado, J. L. Verdegay, “On the sensitivity of membership ...
  • H. R. Maleki, “Ranking functions and their applications to fuzzy ...
  • Y. L. P. Thorani, P. Phani Bushan Rao, N. Ravi ...
  • M. J. Ebadi, M. Suleiman, F. B. Ismail, A. Ahmadian, ...
  • T. Allahviranloo, M. A. Jahantigh, S. Hajighasemi, “A new distance ...
  • N. Mahdavi-Amiri, S. H. Nasseri, “Duality in fuzzy number linear ...
  • P. K. De. Debaroti Das, “Ranking of trapezoidal intuitionistic fuzzy ...
  • T. Hasuike, “Technical and cost efficiencies with ranking function in ...
  • D. Ponnialagan, J. Selvaraj, L. G. N. Velu, “A complete ...
  • R. R. Yager, “A procedure for ordering fuzzy sets of ...
  • H. Shahraki, S. H. Zahiri, “Design and simulation of an ...
  • D. W. van der Merwe, A. P. Engelbrecht, “Data clustering ...
  • S. Hettich, C. L. Blake, C. J. Merz, “UCI repository ...
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