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AuthorMahmood, Arif
AuthorSmall, Michael
Available date2021-09-01T10:03:26Z
Publication Date2016
Publication Name2016 IEEE 32nd International Conference on Data Engineering, ICDE 2016
ResourceScopus
URIhttp://dx.doi.org/10.1109/ICDE.2016.7498395
URIhttp://hdl.handle.net/10576/22446
AbstractInformation mining from networks by identifying communities is an important problem across a number of research fields including social science, biology, physics, and medicine. Most existing community detection algorithms are graph theoretic and lack the ability to detect accurate community boundaries if the ratio of intra-community to inter-community links is low. Also, algorithms based on modularity maximization may fail to resolve communities smaller than a specific size if the community size varies significantly. We propose a fundamentally different community detection algorithm based on the fact that each network community spans a different subspace in the geodesic space. Therefore, each node can only be efficiently represented as a linear combination of nodes spanning the same subspace (Fig. 1). To make the process of community detection more robust, we use sparse linear coding with ?1 norm constraint. In order to find a community label for each node, sparse spectral clustering algorithm is used. The proposed community detection technique is compared with more than ten state of the art methods on two benchmark networks (with known clusters) using normalized mutual information criterion. Our proposed algorithm outperformed existing methods with a significant margin on both benchmark networks. 2016 IEEE.
Languageen
PublisherInstitute of Electrical and Electronics Engineers Inc.
SubjectAlgorithms
Graph theory
Population dynamics
Signal detection
Benchmark networks
Community detection
Community detection algorithms
Linear combinations
Network communities
Normalized mutual information
Spectral clustering algorithms
State-of-the-art methods
Clustering algorithms
TitleSubspace based network community detection using sparse linear coding
TypeConference Paper
Pagination1502-1503


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