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A self-adaptive grey DBSCAN clustering method

A self-adaptive grey DBSCAN clustering method
A self-adaptive grey DBSCAN clustering method
Clustering analysis, as a classical issue in data mining, is widely applied in various research areas. This article proposes a self-adaptive grey DBSCAN (SAG-DBSCAN) clustering algorithm by introducing a grey relational matrix to obtain the grey local density indicator. We then apply this local indicator to have self-adaptive noise identification to gain a dense subset of the clustering data set. An advantage of this algorithm is that it can automatically estimate the parameters utilized to cluster the dense subset. Several frequently-used data sets are further examined to compare the performance and effectiveness of our proposed clustering algorithm with those of other state-of-the-art algorithms. The comparisons indicate that our new method outperforms other common methods.
Lu, Shizhan
ef7c3268-4805-451f-aca0-ed14daea7e24
Cheng, Longsheng
a1e09ded-e2e8-47d1-ae99-9345cf8b0967
Lu, Zudi
4aa7d988-ac2b-4150-a586-ca92b8adda95
Huang, Qifa
5b581745-3681-4564-89b8-3baa631d1ff1
Khan, Bilal Ahmed
2a343c81-2b7f-40f4-abf6-bd4e19acd35e
Lu, Shizhan
ef7c3268-4805-451f-aca0-ed14daea7e24
Cheng, Longsheng
a1e09ded-e2e8-47d1-ae99-9345cf8b0967
Lu, Zudi
4aa7d988-ac2b-4150-a586-ca92b8adda95
Huang, Qifa
5b581745-3681-4564-89b8-3baa631d1ff1
Khan, Bilal Ahmed
2a343c81-2b7f-40f4-abf6-bd4e19acd35e

Lu, Shizhan, Cheng, Longsheng, Lu, Zudi, Huang, Qifa and Khan, Bilal Ahmed (2022) A self-adaptive grey DBSCAN clustering method. The Journal of Grey System, 34 (4).

Record type: Article

Abstract

Clustering analysis, as a classical issue in data mining, is widely applied in various research areas. This article proposes a self-adaptive grey DBSCAN (SAG-DBSCAN) clustering algorithm by introducing a grey relational matrix to obtain the grey local density indicator. We then apply this local indicator to have self-adaptive noise identification to gain a dense subset of the clustering data set. An advantage of this algorithm is that it can automatically estimate the parameters utilized to cluster the dense subset. Several frequently-used data sets are further examined to compare the performance and effectiveness of our proposed clustering algorithm with those of other state-of-the-art algorithms. The comparisons indicate that our new method outperforms other common methods.

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e-pub ahead of print date: 25 December 2022
Published date: 29 December 2022

Identifiers

Local EPrints ID: 475984
URI: http://eprints.soton.ac.uk/id/eprint/475984
PURE UUID: 27fe4b8e-f244-44c0-a63b-bc38cb2ae67b
ORCID for Zudi Lu: ORCID iD orcid.org/0000-0003-0893-832X

Catalogue record

Date deposited: 03 Apr 2023 16:51
Last modified: 17 Mar 2024 03:34

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Contributors

Author: Shizhan Lu
Author: Longsheng Cheng
Author: Zudi Lu ORCID iD
Author: Qifa Huang
Author: Bilal Ahmed Khan

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