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Incremental Lossless Graph Summarization

Jihoon Ko, Yunbum Kook, Kijung Shin

202036 citationsDOIOpen Access PDF

Abstract

Given a fully dynamic graph, represented as a stream of edge insertions and deletions, how can we obtain and incrementally update a lossless summary of its current snapshot? As large-scale graphs are prevalent, concisely representing them is inevitable for efficient storage and analysis. Lossless graph summarization is an effective graph-compression technique with many desirable properties. It aims to compactly represent the input graph as (a) a summary graph consisting of supernodes (i.e., sets of nodes) and superedges (i.e., edges between supernodes), which provide a rough description, and (b) edge corrections which fix errors induced by the rough description. While a number of batch algorithms, suited for static graphs, have been developed for rapid and compact graph summarization, they are highly inefficient in terms of time and space for dynamic graphs, which are common in practice.

Topics & Concepts

Lossless compressionAutomatic summarizationComputer scienceGraphTheoretical computer scienceAlgorithmClique-widthStrength of a graphMathematicsNull graphLine graphGraph theoryVoltage graphEdge contractionData structureEnhanced Data Rates for GSM EvolutionDirected graphGraph propertyData miningGraph Theory and AlgorithmsDNA and Biological ComputingAlgorithms and Data Compression
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