Modularity-density based edge betweenness for catchment classification in a large region

In the studies of catchment classification, the concept of community structure, within the realm of complex networks, is particularly attractive and gaining attention. Among the many community structure methods, the edge betweenness (EB) method, which applies a hierarchical clustering concept, is on...

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Main Authors: Siti Aisyah Tumiran, B. Sivakumar
Format: Proceedings
Language:English
English
Published: Faculty of Science and Natural Resources 2021
Subjects:
Online Access:https://eprints.ums.edu.my/id/eprint/32026/3/Modularity-density%20based%20edge%20betweenness%20for%20catchment%20classification%20in%20a%20large%20region.ABSTRACT.pdf
https://eprints.ums.edu.my/id/eprint/32026/2/MODULARITY-DENSITY%20BASED%20EDGE%20BETWEENNESS%20FOR%20CATCHMENT%20CLASSIFICATION%20IN%20A%20LARGE%20REGION.pdf
https://eprints.ums.edu.my/id/eprint/32026/
https://drive.google.com/file/d/1zKEpSiYvg9vZHHzuKra49512D_AMLubu/view
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spelling my.ums.eprints.320262022-03-24T07:00:06Z https://eprints.ums.edu.my/id/eprint/32026/ Modularity-density based edge betweenness for catchment classification in a large region Siti Aisyah Tumiran B. Sivakumar QA150-272.5 Algebra In the studies of catchment classification, the concept of community structure, within the realm of complex networks, is particularly attractive and gaining attention. Among the many community structure methods, the edge betweenness (EB) method, which applies a hierarchical clustering concept, is one of the most widely used. The EB method, however, is susceptible to the issue of scale (or size) of the network, essentially due to the modularity function that is used to measure the strength of the community structure. To overcome this limitation, the present study proposes an improvement to the EB method. The proposed method, termed as the Modularity Density-based Edge Betweenness (MDEB) method, uses a modularity density function (or D value) by maximization, to obtain the best split of the network. The effectiveness of the MDEB method is evaluated through its application for catchment classification using 218 streamflow stations in Australia. From the network, three different scenarios in network sizes are studied. The superiority of the MDEB method is evaluated in terms of the number of communities identified communities when different network sizes are considered. Faculty of Science and Natural Resources 2021-10 Proceedings PeerReviewed text en https://eprints.ums.edu.my/id/eprint/32026/3/Modularity-density%20based%20edge%20betweenness%20for%20catchment%20classification%20in%20a%20large%20region.ABSTRACT.pdf text en https://eprints.ums.edu.my/id/eprint/32026/2/MODULARITY-DENSITY%20BASED%20EDGE%20BETWEENNESS%20FOR%20CATCHMENT%20CLASSIFICATION%20IN%20A%20LARGE%20REGION.pdf Siti Aisyah Tumiran and B. Sivakumar (2021) Modularity-density based edge betweenness for catchment classification in a large region. https://drive.google.com/file/d/1zKEpSiYvg9vZHHzuKra49512D_AMLubu/view
institution Universiti Malaysia Sabah
building UMS Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Sabah
content_source UMS Institutional Repository
url_provider http://eprints.ums.edu.my/
language English
English
topic QA150-272.5 Algebra
spellingShingle QA150-272.5 Algebra
Siti Aisyah Tumiran
B. Sivakumar
Modularity-density based edge betweenness for catchment classification in a large region
description In the studies of catchment classification, the concept of community structure, within the realm of complex networks, is particularly attractive and gaining attention. Among the many community structure methods, the edge betweenness (EB) method, which applies a hierarchical clustering concept, is one of the most widely used. The EB method, however, is susceptible to the issue of scale (or size) of the network, essentially due to the modularity function that is used to measure the strength of the community structure. To overcome this limitation, the present study proposes an improvement to the EB method. The proposed method, termed as the Modularity Density-based Edge Betweenness (MDEB) method, uses a modularity density function (or D value) by maximization, to obtain the best split of the network. The effectiveness of the MDEB method is evaluated through its application for catchment classification using 218 streamflow stations in Australia. From the network, three different scenarios in network sizes are studied. The superiority of the MDEB method is evaluated in terms of the number of communities identified communities when different network sizes are considered.
format Proceedings
author Siti Aisyah Tumiran
B. Sivakumar
author_facet Siti Aisyah Tumiran
B. Sivakumar
author_sort Siti Aisyah Tumiran
title Modularity-density based edge betweenness for catchment classification in a large region
title_short Modularity-density based edge betweenness for catchment classification in a large region
title_full Modularity-density based edge betweenness for catchment classification in a large region
title_fullStr Modularity-density based edge betweenness for catchment classification in a large region
title_full_unstemmed Modularity-density based edge betweenness for catchment classification in a large region
title_sort modularity-density based edge betweenness for catchment classification in a large region
publisher Faculty of Science and Natural Resources
publishDate 2021
url https://eprints.ums.edu.my/id/eprint/32026/3/Modularity-density%20based%20edge%20betweenness%20for%20catchment%20classification%20in%20a%20large%20region.ABSTRACT.pdf
https://eprints.ums.edu.my/id/eprint/32026/2/MODULARITY-DENSITY%20BASED%20EDGE%20BETWEENNESS%20FOR%20CATCHMENT%20CLASSIFICATION%20IN%20A%20LARGE%20REGION.pdf
https://eprints.ums.edu.my/id/eprint/32026/
https://drive.google.com/file/d/1zKEpSiYvg9vZHHzuKra49512D_AMLubu/view
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score 13.223943