Separating Structure from Noise in Large Graphs Using the Regularity Lemma
May 16, 2019 Β· Declared Dead Β· π Pattern Recognition
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Authors
Marco Fiorucci, Francesco Pelosin, Marcello Pelillo
arXiv ID
1905.06917
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.SI
Citations
7
Venue
Pattern Recognition
Last Checked
4 months ago
Abstract
How can we separate structural information from noise in large graphs? To address this fundamental question, we propose a graph summarization approach based on SzemerΓ©di'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.
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