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arxiv: 1802.07034 · v1 · pith:O3PDLXQPnew · submitted 2018-02-20 · 💻 cs.NE · cs.IR

Memetic Graph Clustering

classification 💻 cs.NE cs.IR
keywords algorithmclusteringgraphamountmemetictechniquestimeable
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It is common knowledge that there is no single best strategy for graph clustering, which justifies a plethora of existing approaches. In this paper, we present a general memetic algorithm, VieClus, to tackle the graph clustering problem. This algorithm can be adapted to optimize different objective functions. A key component of our contribution are natural recombine operators that employ ensemble clusterings as well as multi-level techniques. Lastly, we combine these techniques with a scalable communication protocol, producing a system that is able to compute high-quality solutions in a short amount of time. We instantiate our scheme with local search for modularity and show that our algorithm successfully improves or reproduces all entries of the 10th DIMACS implementation~challenge under consideration using a small amount of time.

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