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Hierarchical clustering that takes advantage of both density-peak and density-connectivity

Authors :
Zhu, Ye
Ting, Kai Ming
Jin, Yuan
Angelova, Maia
Source :
Zhu, Y., Ting, K. M., Jin, Y., & Angelova, M. (2022). Hierarchical clustering that takes advantage of both density-peak and density-connectivity. Information Systems, 103, 101871
Publication Year :
2018

Abstract

This paper focuses on density-based clustering, particularly the Density Peak (DP) algorithm and the one based on density-connectivity DBSCAN; and proposes a new method which takes advantage of the individual strengths of these two methods to yield a density-based hierarchical clustering algorithm. Our investigation begins with formally defining the types of clusters DP and DBSCAN are designed to detect; and then identifies the kinds of distributions that DP and DBSCAN individually fail to detect all clusters in a dataset. These identified weaknesses inspire us to formally define a new kind of clusters and propose a new method called DC-HDP to overcome these weaknesses to identify clusters with arbitrary shapes and varied densities. In addition, the new method produces a richer clustering result in terms of hierarchy or dendrogram for better cluster structures understanding. Our empirical evaluation results show that DC-HDP produces the best clustering results on 14 datasets in comparison with 7 state-of-the-art clustering algorithms.

Details

Database :
arXiv
Journal :
Zhu, Y., Ting, K. M., Jin, Y., & Angelova, M. (2022). Hierarchical clustering that takes advantage of both density-peak and density-connectivity. Information Systems, 103, 101871
Publication Type :
Report
Accession number :
edsarx.1810.03393
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.is.2021.101871