Publication | Closed Access
Graph summarization with bounded error
342
Citations
28
References
2008
Year
Unknown Venue
Graph SparsityNetwork ScienceGraph TheoryData ScienceMachine LearningEngineeringNetwork AnalysisGraph SummarizationGraph SummaryAggregate GraphGraph Signal ProcessingComputer ScienceGraph G ConsistingGraph AnalysisGraph AlgorithmGraph Processing
We propose a highly compact two-part representation of a given graph G consisting of a graph summary and a set of corrections. The graph summary is an aggregate graph in which each node corresponds to a set of nodes in G, and each edge represents the edges between all pair of nodes in the two sets. On the other hand, the corrections portion specifies the list of edge-corrections that should be applied to the summary to recreate G. Our representations allow for both lossless and lossy graph compression with bounds on the introduced error. Further, in combination with the MDL principle, they yield highly intuitive coarse-level summaries of the input graph G. We develop algorithms to construct highly compressed graph representations with small sizes and guaranteed accuracy, and validate our approach through an extensive set of experiments with multiple real-life graph data sets.
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