Beyond Trivial Edges: A Fractional Approach to Cohesive Subgraph Detection in Hypergraphs
Hypergraphs serve as a powerful tool for modeling complex relationships across domains like social networks, transactions, and recommendation systems. The (k,g)-core model effectively identifies cohesive subgraphs by assessing internal connections and co-occurrence patterns, but it is susceptible to...
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Zusammenfassung: | Hypergraphs serve as a powerful tool for modeling complex relationships
across domains like social networks, transactions, and recommendation systems.
The (k,g)-core model effectively identifies cohesive subgraphs by assessing
internal connections and co-occurrence patterns, but it is susceptible to
inflated cohesiveness due to trivial hyperedges. To address this, we propose
the $(k,g,p)$-core model, which incorporates the relative importance of
hyperedges for more accurate subgraph detection. We develop both Na\"ive and
Advanced pruning algorithms, demonstrating through extensive experiments that
our approach reduces the execution frequency of costly operations by 51.9% on
real-world datasets. |
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DOI: | 10.48550/arxiv.2410.20350 |