Mkhitaryan Karen ; Mothe Josiane
Community detection is a research area from network science dealing with the investigation of complex networks such as biological, social and computer networks, aiming to identify subgroups (communities) of entities (nodes) that are more closely related to each other than with remaining entities in the network [1]. Various community detection algorithms are used in the literature however the evaluation of their derived community structure is a challenging task due to varying results on different networks. In searching good community detection algorithms diverse comparison measures are used actively [2]. Information theoretic measures form a fundamental class in this discipline and have recently received increasing interest [3]. In this paper we first mention the usual evaluation measures used for community detection evaluation We then review the properties of f-divergence measures and propose the ones that can serve community detection evaluation. Preliminary experiments show the advantage of these measures in the case of large number of communities.
oai:noad.sci.am:135852
Institute for Informatics and Automation Problems ; IRIT, UMR5505 CNRS & ESPE, Univ. de Toulouse,
Collaborative Technologies and Data science in Smart City Applications
Mar 3, 2021
Jul 22, 2020
18
https://noad.sci.am/publication/149411
Edition name | Date |
---|---|
Mariam Haroutunian, f-Divergence measures for evaluation in community detection | Mar 3, 2021 |
Haroutunian Mariam Pahlevanyan Narek
Haroutunian Mariam Pahlevanyan Narek
Haroutunian Mariam Ter-Vardanyan Lilit
Haroutunian Mariam Mkhitaryan Karen Mothe Josiane
Haroutunian Mariam Haroutunian Evgueni
Haroutunian Mariam Haroutunian Evgueni Hakobyan Parandzem Mikayelyan Hovsep