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Comparative Study of Two Clustering Algorithms: Performance Analysis of a New Algorithm Against the Evidential C-Means Algorithm

In: Information Systems and Technological Advances for Sustainable Development

Author

Listed:
  • Yissam Lakhdar

    (Regional Center for Education and Training Professions)

  • Khawla Bendadi

    (École Marocaine des Sciences de L’ingénieur, EMSI)

Abstract

Clustering techniques are essential elements for exploring and analyzing data. This paper provides a comparative study between a new clustering algorithm based on a new density peak detection approach introducing the imprecise data concept, named Robust density peak detection with imprecision data (RDPTI), and the Evidential C-Means method [1–4]. The aim of this research is to analyze the performance, efficiency and usefulness of the new algorithm against the established Evidential C-Means method. Unsupervised statistical classification methods based on probability density function estimation have a wide field of application. In this paper, we propose a new algorithm based on density peaks. By introducing the notion of imprecise data and combining two noise detection methods, this proposed algorithm produces three types of clusters: singleton clusters, meta-clusters and outlier cluster. In order to demonstrate the effectiveness and robustness of the RDPTI method, artificial and real data are tested and the algorithm is compared with the Evidential C-means algorithm, which is a clustering algorithm based on the belief function theory. Experimental results show that the proposed algorithm RDPTI improves clustering accuracy over the Evidential C-Means method. The outcomes provide precious information for scientists looking to take advantage of new clustering techniques for a variety of applications in data analysis.

Suggested Citation

  • Yissam Lakhdar & Khawla Bendadi, 2024. "Comparative Study of Two Clustering Algorithms: Performance Analysis of a New Algorithm Against the Evidential C-Means Algorithm," Lecture Notes in Information Systems and Organization, in: Mohamed Ben Ahmed & Anouar Abdelhakim Boudhir & Hany Farhat Abd Elhamid Attia & Adriana Eštoková & M (ed.), Information Systems and Technological Advances for Sustainable Development, pages 319-327, Springer.
  • Handle: RePEc:spr:lnichp:978-3-031-75329-9_35
    DOI: 10.1007/978-3-031-75329-9_35
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