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Published in: World Wide Web 3/2017

21-05-2016

MTP: discovering high quality partitions in real world graphs

Authors: Yongsub Lim, Won-Jo Lee, Ho-Jin Choi, U Kang

Published in: World Wide Web | Issue 3/2017

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Abstract

Given a real world graph, how can we find a large subgraph whose partition quality is much better than the original? How can we use a partition of that subgraph to discover a high quality global partition? Although graph partitioning especially with balanced sizes has received attentions in various applications, it is known NP-hard, and also known that there is no good cut at a large scale for real graphs. In this paper, we propose a novel approach for graph partitioning. Our first focus is on finding a large subgraph with high quality partitions, in terms of conductance. Despite the difficulty of the task for the whole graph, we observe that there is a large connected subgraph whose partition quality is much better than the original. Our proposed method MTP finds such a subgraph by removing “hub” nodes with large degrees, and taking the remaining giant connected component. Further, we extend MTP to gb MTP (Global Balanced MTP) for discovering a global balanced partition. gb MTP attaches the excluded nodes in MTP to the partition found by MTP in a greedy way. In experiments, we demonstrate that MTP finds a subgraph of a large size with low conductance graph partitions, compared with competing methods. We also show that the competitors cannot find connected subgraphs while our method does, by construction. This improvement in partition quality for the subgraph is especially noticeable for large scale cuts—for a balanced partition, down to 14 % of the original conductance with the subgraph size 70 % of the total. As a result, the found subgraph has clear partitions at almost all scales compared with the original. Moreover, gb MTP generally discovers global balanced partitions whose conductance are lower than those found by METIS, the state-of-the-art graph partitioning method.

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Footnotes
1
We use subset to indicate a set of nodes in a graph, and subsets for its plural.
 
3
a balanced partition for a subset of nodes.
 
4
A principal submatrix with size \(n^{\prime }\times n^{\prime }\) of a matrix A with size n×n for \(n^{\prime }\leq n\) is a submatrix by taking the first \(n^{\prime }\) rows and columns from A.
 
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Metadata
Title
MTP: discovering high quality partitions in real world graphs
Authors
Yongsub Lim
Won-Jo Lee
Ho-Jin Choi
U Kang
Publication date
21-05-2016
Publisher
Springer US
Published in
World Wide Web / Issue 3/2017
Print ISSN: 1386-145X
Electronic ISSN: 1573-1413
DOI
https://doi.org/10.1007/s11280-016-0393-1

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