期刊论文详细信息
PATTERN RECOGNITION 卷:98
Separating Structure from Noise in Large Graphs Using the Regularity Lemma
Article
Fiorucci, Marco1  Pelosin, Francesco1  Pelillo, Marcello1,2 
[1] Ca Foscari Univ, DAIS, Via Torino 155, Venice, Italy
[2] Ca Foscari Univ, ECLT, S Marco 2940, Venice, Italy
关键词: Regularity lemma;    Graph summarization;    Structural patterns;    Noise;    Randomness;    Graph similarity search;   
DOI  :  10.1016/j.patcog.2019.107070
来源: Elsevier
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【 摘 要 】

How can we separate structural information from noise in large graphs? To address this fundamental question, we propose a graph summarization approach based on Szemeredi's Regularity Lemma, a well-known result in graph theory, which roughly states that every graph can be approximated by the union of a small number of random-like bipartite graphs called regular pairs. Hence, the Regularity Lemma provides us with a principled way to describe the essential structure of large graphs using a small amount of data. Our paper has several contributions: (i) We present our summarization algorithm which is able to reveal the main structural patterns in large graphs. (ii) We discuss how to use our summarization framework to efficiently retrieve from a database the top-k graphs that are most similar to a query graph. (iii) Finally, we evaluate the noise robustness of our approach in terms of the reconstruction error and the usefulness of the summaries in addressing the graph search task. (C) 2019 Elsevier Ltd. All rights reserved.

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