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Algorithm for Mining Maximal Balanced Bicliques using Formal Concept Analysisopen access

Authors
Ilkhomjon, SadriddinovPeng, SonySiet, SophortKim, Dae-YoungPark, Doo-SoonYi, Gangman
Issue Date
2025
Publisher
IEEE
Keywords
Bipartite Graph; Bipartite graph; Formal Concept Analysis; Formal concept analysis; Lattices; Maximal Balanced Biclique; Shape; Social networking (online); Time complexity; Web pages
Citation
IEEE Access, v.13, pp 35113 - 35123
Pages
11
Indexed
SCIE
SCOPUS
Journal Title
IEEE Access
Volume
13
Start Page
35113
End Page
35123
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/22265
DOI
10.1109/ACCESS.2024.3419838
ISSN
2169-3536
2169-3536
Abstract
One of the most fundamental models for cohesive subgraph mining in network analysis is that which involves the use of cliques. In bipartite graph analysis, the detection of maximal balanced bicliques (MBB) is an important problem with numerous applications, including VLSI design, protein interactions, and social networks. However, MBB detection is difficult, complex, and time-consuming. In the current paper, to address these disadvantages, we propose a new algorithm for detecting MBB using formal concept analysis (FCA) on bipartite graphs. We applied an algorithm to compute formal concepts from the formal context, which is an alternative way of representing a bipartite graph.We proved that the MBB problem is equivalent to the semi-equiconcept enumeration problem in the formal context. Therefore, the semi-equiconcept mining algorithm was applied to theMBB enumeration problem. However, since the existing FCA algorithm cannot be directly applied to mine all MBBs, the FCA algorithm was modified in its entirety. Thorough asymptotic analysis was performed on the proposed algorithm. Experiments were also conducted on various real-world bipartite graphs to which the proposed algorithm was applied, and our results were found to be significantly better than those obtained by the preexisting algorithm. Authors
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