Faster Betweenness Centrality Updates in Evolving Networks
April 27, 2017 Β· Declared Dead Β· π The Sea
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Authors
Elisabetta Bergamini, Henning Meyerhenke, Mark Ortmann, Arie Slobbe
arXiv ID
1704.08592
Category
cs.DS: Data Structures & Algorithms
Citations
17
Venue
The Sea
Last Checked
3 months ago
Abstract
Finding central nodes is a fundamental problem in network analysis. Betweenness centrality is a well-known measure which quantifies the importance of a node based on the fraction of shortest paths going though it. Due to the dynamic nature of many today's networks, algorithms that quickly update centrality scores have become a necessity. For betweenness, several dynamic algorithms have been proposed over the years, targeting different update types (incremental- and decremental-only, fully-dynamic). In this paper we introduce a new dynamic algorithm for updating betweenness centrality after an edge insertion or an edge weight decrease. Our method is a combination of two independent contributions: a faster algorithm for updating pairwise distances as well as number of shortest paths, and a faster algorithm for updating dependencies. Whereas the worst-case running time of our algorithm is the same as recomputation, our techniques considerably reduce the number of operations performed by existing dynamic betweenness algorithms.
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