Genetic clustering algorithms: A comparison simulation study

被引:0
|
作者
Department of Sociology and Communication, University of Rome La Sapienza, Via Salaria 113, 00198 Rome, Italy [1 ]
机构
来源
Int J Modell Simul | 2006年 / 3卷 / 190-200期
关键词
Computer simulation - Integer programming - Monte Carlo methods - Parameter estimation - Perturbation techniques - Problem solving;
D O I
10.1080/02286203.2006.11442368
中图分类号
学科分类号
摘要
In this paper the performance of genetic algorithms for solving some clustering problems is investigated through a simulation experiment. If the number of clusters is known in advance, our results show that the genetic algorithm is able to find the right partition, almost irrespective of the genetic parameters selected. Also, the genetic algorithm always performs favourably with respect to the K-means algorithm. On the other hand, if the number of clusters is unknown, the genetic algorithm provides good results as well. Four versions of the genetic algorithm proposed in the literature are compared, and their performances are not found to differ significantly. However, all algorithms have to be supplied with some reasonable positive integer for the maximum number of clusters. Otherwise, the estimated number of clusters is not very near to the true value. Moreover, if the points are not equally partitioned into clusters, the performances deteriorate considerably. On the contrary, other perturbation sources, such as outliers or data errors, do not affect the results.
引用
收藏
相关论文
共 50 条
  • [31] Consensus Clustering Algorithms: Comparison and Refinement
    Goder, Andrey
    Filkov, Vladimir
    PROCEEDINGS OF THE TENTH WORKSHOP ON ALGORITHM ENGINEERING AND EXPERIMENTS AND THE FIFTH WORKSHOP ON ANALYTIC ALGORITHMICS AND COMBINATORICS, 2008, : 109 - 117
  • [32] Data Clustering Algorithms: Experimentation and Comparison
    Khandare, Anand
    Pawar, Rutika
    INTELLIGENT COMPUTING AND NETWORKING, IC-ICN 2021, 2022, 301 : 86 - 99
  • [33] A Comparison of Metrics and Algorithms for Fiber Clustering
    Siless, Viviana
    Medina, Sergio
    Varoquaux, Gael
    Thirion, Bertrand
    2013 3RD INTERNATIONAL WORKSHOP ON PATTERN RECOGNITION IN NEUROIMAGING (PRNI 2013), 2013, : 190 - 193
  • [34] An Empirical Comparison of Stream Clustering Algorithms
    Carnein, Matthias
    Assenmacher, Dennis
    Trautmann, Heike
    ACM INTERNATIONAL CONFERENCE ON COMPUTING FRONTIERS 2017, 2017, : 361 - 366
  • [35] A comparison study between genetic algorithms and Bayesian optimize algorithms by novel indices
    Mori, Naoki
    Takeda, Masayuki
    Matsumoto, Keinosuke
    GECCO 2005: GENETIC AND EVOLUTIONARY COMPUTATION CONFERENCE, VOLS 1 AND 2, 2005, : 1485 - 1492
  • [36] Genetic Algorithms for Auto-Clustering in KDD
    Li Minqiang
    JournalofSystemsEngineeringandElectronics, 2000, (03) : 53 - 58
  • [37] Adaptive clustering technique using genetic algorithms
    Park, NH
    Ahn, CW
    Ramakrishna, RS
    IEICE TRANSACTIONS ON INFORMATION AND SYSTEMS, 2005, E88D (12) : 2880 - 2882
  • [38] Multiple Network Motif Clustering with Genetic Algorithms
    Pizzuti, Clara
    Socievole, Annalisa
    ARTIFICIAL LIFE AND EVOLUTIONARY COMPUTATION, WIVACE 2017, 2018, 830 : 296 - 307
  • [39] A distributed approach to fuzzy clustering by genetic algorithms
    Wei, CH
    Fahn, CS
    SOFT COMPUTING IN INTELLIGENT SYSTEMS AND INFORMATION PROCESSING, 1996, : 350 - 357
  • [40] A Tutorial on Manifold Clustering using Genetic Algorithms
    Menendez, Hector D.
    2015 INTERNATIONAL SYMPOSIUM ON INNOVATIONS IN INTELLIGENT SYSTEMS AND APPLICATIONS (INISTA) PROCEEDINGS, 2015, : 1 - 6