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Efficient semi-streaming algorithms for local triangle counting in massive graphs
330
Citations
33
References
2008
Year
Unknown Venue
Cluster ComputingEngineeringLarge GraphsPlanar GraphCommunity MiningNetwork AnalysisEducationGraph ProcessingComputational Social ScienceData ScienceStructural Graph TheoryDiscrete MathematicsProbabilistic Graph TheoryComputational GeometrySocial Network AnalysisGeometric Graph TheoryComputer ScienceGraph AlgorithmNetwork ScienceGraph TheoryLocal Triangle CountingGraph AnalysisLocal Triangle
In this paper we study the problem of local triangle counting in large graphs. Namely, given a large graph G = (V;E) we want to estimate as accurately as possible the number of triangles incident to every node υ ∈ V in the graph. The problem of computing the global number of triangles in a graph has been considered before, but to our knowledge this is the first paper that addresses the problem of local triangle counting with a focus on the efficiency issues arising in massive graphs. The distribution of the local number of triangles and the related local clustering coefficient can be used in many interesting applications. For example, we show that the measures we compute can help to detect the presence of spamming activity in large-scale Web graphs, as well as to provide useful features to assess content quality in social networks.
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