A new metric to compare local community detection algorithms in social networks using geodesic distance

被引:0
作者
Sahar Bakhtar
Hovhannes A. Harutyunyan
机构
[1] Concordia University,Department of Computer Science and Software Engineering
来源
Journal of Combinatorial Optimization | 2022年 / 44卷
关键词
Social networks; Community detection; Local community detection algorithms; Evaluation metrics;
D O I
暂无
中图分类号
学科分类号
摘要
Community detection problem is a well-studied problem in social networks. One major question to this problem is how to evaluate different community detection algorithms. This issue is even more challenging in the problem of local community detection where only local information of communities is available. Normally, two community detection algorithms are compared by evaluating their resulted communities. In this regard, the most widely used technique to evaluate the quality of communities is to compare them with the ground-truth communities. However, for a large number of networks, the ground-truth communities are not known. As a result, it is necessary to have a comprehensive metric to evaluate the quality of communities. In this study, improving a local quality metric, a number of local community detection algorithms are compared through assessing their detected communities. Furthermore, using some small graphs as example communities, some drawbacks of a number of existing local metrics are discussed. Finally, according to the experimental results, it is illustrated that the local community detection algorithms are fairly compared using the proposed metric, GDM. It is also shown that the judgment of GDM is almost the same as that of F1-score, i.e. the metric which compares the community with its ground-truth community.
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页码:2809 / 2831
页数:22
相关论文
共 48 条
  • [1] Ann ES(2019)The importance of the whole: topological data analysis for the network neuroscientist Netw Neurosci 3 656-673
  • [2] Jennifer EP-C(2005)Finding local community structure in networks Phys Rev E 72 396-405
  • [3] Robert G(2014)Community detection in networks: structural communities versus ground truth Phys Rev E 90 36-41
  • [4] Danielle SB(2003)The bottlenose dolphin community of doubtful sound features a large proportion of long-lasting associations Behav Ecol Sociobiol 54 69-79
  • [5] Clauset A(2007)Resolution limit in community detection Proc Natl Acad Sci 104 7821-7826
  • [6] Darko H(2019)Overlapping community detection based on conductance optimization in large-scale networks Phys A Stat Mech Appl 522 651-706
  • [7] Richard KD(2002)Community structure in social and biological networks Proc Natl Acad Sci 99 046110-4294
  • [8] Santo F(2018)Community detection algorithm evaluation with ground-truth data Phys A Stat Mech Appl 492 4267-4294
  • [9] David L(2008)Benchmark graphs for testing community detection algorithms Phys Rev E 78 4267-3150
  • [10] Karsten S(2019)An effective security measures for nuclear power plant using big data analysis approach J Supercomput 75 3136-5175