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Published in: Knowledge and Information Systems 2/2013

01-05-2013 | Regular Paper

D-cores: measuring collaboration of directed graphs based on degeneracy

Authors: Christos Giatsidis, Dimitrios M. Thilikos, Michalis Vazirgiannis

Published in: Knowledge and Information Systems | Issue 2/2013

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Abstract

Community detection and evaluation is an important task in graph mining. In many cases, a community is defined as a subgraph characterized by dense connections or interactions between its nodes. A variety of measures are proposed to evaluate different quality aspects of such communities—in most cases ignoring the directed nature of edges. In this paper, we introduce novel metrics for evaluating the collaborative nature of directed graphs—a property not captured by the single node metrics or by other established community evaluation metrics. In order to accomplish this objective, we capitalize on the concept of graph degeneracy and define a novel D-core framework, extending the classic graph-theoretic notion of \(k\)-cores for undirected graphs to directed ones. Based on the D-core, which essentially can be seen as a measure of the robustness of a community under degeneracy, we devise a wealth of novel metrics used to evaluate graph collaboration features of directed graphs. We applied the D-core approach on large synthetic and real-world graphs such as Wikipedia, DBLP, and ArXiv and report interesting results at the graph as well at the node level.

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Metadata
Title
D-cores: measuring collaboration of directed graphs based on degeneracy
Authors
Christos Giatsidis
Dimitrios M. Thilikos
Michalis Vazirgiannis
Publication date
01-05-2013
Publisher
Springer-Verlag
Published in
Knowledge and Information Systems / Issue 2/2013
Print ISSN: 0219-1377
Electronic ISSN: 0219-3116
DOI
https://doi.org/10.1007/s10115-012-0539-0

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