Automatic recovering the number k of clusters in the data by active query selection

被引:1
作者
Sousa, Herio [1 ]
de Souto, Marcilio C. P. [2 ]
Kuroshu, Reginaldo M. [1 ]
Lorena, Ana Carolina [3 ]
机构
[1] Univ Fed Sao Paulo, Sao Jose Dos Campos, SP, Brazil
[2] Univ Orleans, Orleans, France
[3] Inst Tecnol Aeronaut, Sao Jose Dos Campos, SP, Brazil
来源
36TH ANNUAL ACM SYMPOSIUM ON APPLIED COMPUTING, SAC 2021 | 2021年
关键词
Constrained clustering; Active query selection; Number of clusters;
D O I
10.1145/3412841.3441978
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
One common parameter of many clustering algorithms is the number k of clusters required to partition the data. This is the case of k-means, one of the most popular clustering algorithms from the Machine Learning literature, and its variants. Indeed, when clustering a dataset, the right number k of clusters to use is often not obvious, and choosing k automatically is a hard algorithmic problem. In this context, one popular procedure used to estimate the number of clusters present in a dataset is to run the clustering algorithm multiple times varying the number of clusters and one of the solutions obtained is chosen based on a given internal clustering validation measure (e.g., silhouette coefficient). This process can be very time consuming as the clustering algorithm must be run several times. In this paper we present some strategies that can be integrated to constrained clustering methods so as to recover automatically the number k of clusters. The idea is that constrained clustering algorithms allow one to incorporate prior information such as if some pairs of instances from the dataset must be placed in the same cluster or not. Still in the context of constrained clustering algorithms, in order to improve the quality of the pairwise constraints given as input to the algorithm, there are approaches that use active methods for pairwise constraint selection. In our proposed strategies we make use of the prior information provided by the pairwise constraints and the concept of neighborhood from active methods not only to build a partition, but also to identify automatically the number k of clusters in the data. Based on nine datasets, we show experimentally that our strategies, besides automatically recovering the number of clusters in the data, lead to the generation of partitions having high quality when evaluated by indicators of clustering performance such as the adjusted Rand index.
引用
收藏
页码:1021 / 1029
页数:9
相关论文
共 38 条
  • [31] An ensemble method for estimating the number of clusters in a big data set using multiple random samples
    Mahmud, Mohammad Sultan
    Huang, Joshua Zhexue
    Ruby, Rukhsana
    Wu, Kaishun
    JOURNAL OF BIG DATA, 2023, 10 (01)
  • [32] A hierarchical Gamma Mixture Model-based method for estimating the number of clusters in complex data
    Azhar, Muhammad
    Huang, Joshua Zhexue
    Masud, Md Abdul
    Li, Mark Junjie
    Cui, Laizhong
    APPLIED SOFT COMPUTING, 2020, 87 (87)
  • [33] An ensemble method for estimating the number of clusters in a big data set using multiple random samples
    Mohammad Sultan Mahmud
    Joshua Zhexue Huang
    Rukhsana Ruby
    Kaishun Wu
    Journal of Big Data, 10
  • [34] Determination of the appropriate parameters for K-means clustering using selection of region clusters based on density DBSCAN (SRCD-DBSCAN)
    Limwattanapibool, Onapa
    Arch-int, Somjit
    EXPERT SYSTEMS, 2017, 34 (03)
  • [35] A new validity clustering index-based on finding new centroid positions using the mean of clustered data to determine the optimum number of clusters
    Abdalameer, Ahmed Khaldoon
    Alswaitti, Mohammed
    Alsudani, Ahmed Adnan
    Isa, Nor Ashidi Mat
    EXPERT SYSTEMS WITH APPLICATIONS, 2022, 191
  • [36] Variance-Based Cluster Selection Criteria in a K-Means Framework for One-Mode Dissimilarity Data
    J. Fernando Vera
    Rodrigo Macías
    Psychometrika, 2017, 82 : 275 - 294
  • [37] Variance-Based Cluster Selection Criteria in a K-Means Framework for One-Mode Dissimilarity Data
    Fernando Vera, J.
    Macias, Rodrigo
    PSYCHOMETRIKA, 2017, 82 (02) : 275 - 294
  • [38] Map Reduce based REmoving Dependency on K and Initial Centroid Selection MR-REDIC Algorithm for clustering of Mixed Data
    Nirmal, Khyati R.
    Satyanarayana, K. V. V.
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2020, 11 (02) : 733 - 740