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Proximity Curves for Potential-Based Clustering

Author

Listed:
  • Attila Csenki

    (University of Bradford)

  • Daniel Neagu

    (University of Bradford)

  • Denis Torgunov

    (University of Bradford)

  • Natasha Micic

    (University of Bradford)

Abstract

The concept of proximity curve and a new algorithm are proposed for obtaining clusters in a finite set of data points in the finite dimensional Euclidean space. Each point is endowed with a potential constructed by means of a multi-dimensional Cauchy density, contributing to an overall anisotropic potential function. Guided by the steepest descent algorithm, the data points are successively visited and removed one by one, and at each stage the overall potential is updated and the magnitude of its local gradient is calculated. The result is a finite sequence of tuples, the proximity curve, whose pattern is analysed to give rise to a deterministic clustering. The finite set of all such proximity curves in conjunction with a simulation study of their distribution results in a probabilistic clustering represented by a distribution on the set of dendrograms. A two-dimensional synthetic data set is used to illustrate the proposed potential-based clustering idea. It is shown that the results achieved are plausible since both the ‘geographic distribution’ of data points as well as the ‘topographic features’ imposed by the potential function are well reflected in the suggested clustering. Experiments using the Iris data set are conducted for validation purposes on classification and clustering benchmark data. The results are consistent with the proposed theoretical framework and data properties, and open new approaches and applications to consider data processing from different perspectives and interpret data attributes contribution to patterns.

Suggested Citation

  • Attila Csenki & Daniel Neagu & Denis Torgunov & Natasha Micic, 2020. "Proximity Curves for Potential-Based Clustering," Journal of Classification, Springer;The Classification Society, vol. 37(3), pages 671-695, October.
  • Handle: RePEc:spr:jclass:v:37:y:2020:i:3:d:10.1007_s00357-019-09348-y
    DOI: 10.1007/s00357-019-09348-y
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