Some properties of e-quality function for network clustering
One of the most important properties of graphs that represents real complex systems is community structure, or clustering, i.e., organizing vertices in cohesive groups with high concentration of edges within individual groups and low concentration of edges between vertices in different groups. In th...
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University of Belgrade
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doaj-b8d3a1bf804545e38f4c037174a4dcf72021-02-22T07:26:02ZengUniversity of BelgradeYugoslav Journal of Operations Research0354-02431820-743X2021-01-01311657410.2298/YJOR191215031D0354-02432000031DSome properties of e-quality function for network clusteringDžamić Dušan0https://orcid.org/0000-0002-9088-879XFaculty of Organizational Sciences, University of Belgrade, SerbiaOne of the most important properties of graphs that represents real complex systems is community structure, or clustering, i.e., organizing vertices in cohesive groups with high concentration of edges within individual groups and low concentration of edges between vertices in different groups. In this paper, we analyze Exponential Quality function for network clustering. We consider different classes of artificial networks from literature and analyze whether the maximization of Exponential Quality function tends to merge or split clusters in optimal partition even if they are unambiguously defined. Our theoretical results show that Exponential Quality function detects the expected and reasonable clusters in all classes of instances and the Modularity function does not.http://www.doiserbia.nb.rs/img/doi/0354-0243/2021/0354-02432000031D.pdfclusteringequality functioncomplex networks |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Džamić Dušan |
spellingShingle |
Džamić Dušan Some properties of e-quality function for network clustering Yugoslav Journal of Operations Research clustering equality function complex networks |
author_facet |
Džamić Dušan |
author_sort |
Džamić Dušan |
title |
Some properties of e-quality function for network clustering |
title_short |
Some properties of e-quality function for network clustering |
title_full |
Some properties of e-quality function for network clustering |
title_fullStr |
Some properties of e-quality function for network clustering |
title_full_unstemmed |
Some properties of e-quality function for network clustering |
title_sort |
some properties of e-quality function for network clustering |
publisher |
University of Belgrade |
series |
Yugoslav Journal of Operations Research |
issn |
0354-0243 1820-743X |
publishDate |
2021-01-01 |
description |
One of the most important properties of graphs that represents real complex systems is community structure, or clustering, i.e., organizing vertices in cohesive groups with high concentration of edges within individual groups and low concentration of edges between vertices in different groups. In this paper, we analyze Exponential Quality function for network clustering. We consider different classes of artificial networks from literature and analyze whether the maximization of Exponential Quality function tends to merge or split clusters in optimal partition even if they are unambiguously defined. Our theoretical results show that Exponential Quality function detects the expected and reasonable clusters in all classes of instances and the Modularity function does not. |
topic |
clustering equality function complex networks |
url |
http://www.doiserbia.nb.rs/img/doi/0354-0243/2021/0354-02432000031D.pdf |
work_keys_str_mv |
AT dzamicdusan somepropertiesofequalityfunctionfornetworkclustering |
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1724256931979198464 |