Distributed Graph Clustering using Modularity and Map Equation
October 26, 2017 Β· Declared Dead Β· π European Conference on Parallel Processing
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Authors
Michael Hamann, Ben Strasser, Dorothea Wagner, Tim Zeitz
arXiv ID
1710.09605
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DC,
physics.soc-ph
Citations
13
Venue
European Conference on Parallel Processing
Last Checked
3 months ago
Abstract
We study large-scale, distributed graph clustering. Given an undirected graph, our objective is to partition the nodes into disjoint sets called clusters. A cluster should contain many internal edges while being sparsely connected to other clusters. In the context of a social network, a cluster could be a group of friends. Modularity and map equation are established formalizations of this internally-dense-externally-sparse principle. We present two versions of a simple distributed algorithm to optimize both measures. They are based on Thrill, a distributed big data processing framework that implements an extended MapReduce model. The algorithms for the two measures, DSLM-Mod and DSLM-Map, differ only slightly. Adapting them for similar quality measures is straight-forward. We conduct an extensive experimental study on real-world graphs and on synthetic benchmark graphs with up to 68 billion edges. Our algorithms are fast while detecting clusterings similar to those detected by other sequential, parallel and distributed clustering algorithms. Compared to the distributed GossipMap algorithm, DSLM-Map needs less memory, is up to an order of magnitude faster and achieves better quality.
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