4.7 Article

WC-KNNG-PC: Watershed clustering based on k -nearest-neighbor graph and Pauta Criterion

期刊

PATTERN RECOGNITION
卷 121, 期 -, 页码 -

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2021.108177

关键词

Watershed clustering; K-nearest neighbor graph (KNNG); Pauta criterion; Shared nearest neighbor (SNN)

资金

  1. Fundamental Research Funds for the Central Universities [2014B33014]
  2. Hong Kong Institute for Data Science [9360163]

向作者/读者索取更多资源

Watershed clustering is a clustering method based on watershed algorithm that can automatically determine the number of clusters in a dataset. In order to handle datasets with multiple dimensions and nonlinear structures, enhancements like KNNG, shared nearest neighbor method, and Pauta Criterion have been introduced. This approach, WC-KNNG-PC, has shown successful performance in clustering various dimensional and complex datasets with heterogeneous density and diverse shapes.
Watershed clustering utilizes the concept of watershed algorithm to process clustering or cluster analyzes. The most attractive characteristic of this method is the capability to determine automatically the number of clusters from the data sets. However, in terms of the literature, the purposes of the original watershed clustering algorithm and the improved version are the detection of the clusters within two-dimensional linear data sets. In order to enable watershed clustering to deal with the dataset with multiple dimensions and nonlinear structures, we introduce k-nearest neighbor graph (KNNG), the shared nearest neighbor method and Pauta Criterion into watershed clustering to present a new watershed graph clustering with noise detection, WC-KNNG-PC. This approach first calculates a KNNG for the data sets, and then compute catchment basins (subclusters), basin immersions (connectivity between basins) and outliers. To prevent the merger of illegal subclusters, a maximum normalization stability factor, based on t-nearest neighbors and angle, MNSF, is proposed to detect the invalid basin immersions. Finally, a basin level similarity using median criterion is presented to merge the catchment basins to obtain the final clustering. Experiments on complex synthetic datasets and multidimensional real-world datasets have successfully demonstrated that the performance of the WC-KNNG-PC in clustering some various dimensional and complex datasets with heterogeneous density and diverse shapes. (c) 2021 Elsevier Ltd. All rights reserved.

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