A Spark Parallel Betweenness Centrality Computation and its Application to Community Detection Problems

Author:

Gomez González DanielORCID,Llana Díaz Luis,Pareja Cristóbal

Abstract

The Brandes algorithm has the lowest computational complexity for computing the betweenness centrality measures of all nodes or edges in a given graph. Its numerous applications make it one of the most used algorithms in social network analysis. In this work, we provide a parallel version of the algorithm implemented in Spark. The experimental results show that the parallel algorithm scales as the number of cores increases. Finally, we provide a version of the well-known community detection Girvan-Newman algorithm, based on the Spark version of Brandes algorithm.

Publisher

Pensoft Publishers

Subject

General Computer Science,Theoretical Computer Science

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