Large-scale network motif analysis using compression

Peter Bloem*, Steven de Rooij

*Corresponding author for this work

Research output: Contribution to JournalArticleAcademicpeer-review

Abstract

We introduce a new method for finding network motifs. Subgraphs are motifs when their frequency in the data is high compared to the expected frequency under a null model. To compute this expectation, a full or approximate count of the occurrences of a motif is normally repeated on as many as 1000 random graphs sampled from the null model; a prohibitively expensive step. We use ideas from the minimum description length literature to define a new measure of motif relevance. With our method, samples from the null model are not required. Instead we compute the probability of the data under the null model and compare this to the probability under a specially designed alternative model. With this new relevance test, we can search for motifs by random sampling, rather than requiring an accurate count of all instances of a motif. This allows motif analysis to scale to networks with billions of links.

Original languageEnglish
Pages (from-to)1421-1453
Number of pages33
JournalData Mining and Knowledge Discovery
Volume34
Issue number5
Early online date23 Jun 2020
DOIs
Publication statusPublished - 1 Sept 2020

Keywords

  • Minimum description length
  • Motifs
  • Network analysis

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