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An efficiently computable subgraph pattern support measure: Counting independent observations

Journal Contribution - Journal Article

Graph support measures are functions measuring how frequently a given subgraph pattern occurs in a given database graph. An important class of support measures relies on overlap graphs. A major advantage of overlap-graph based approaches is that they combine anti-monotonicity with counting the occurrences of a subgraph pattern which are independent according to certain criteria. However, existing overlap-graph based support measures are expensive to compute. In this paper, we propose a new support measure which is based on a new notion of independence. We show that our measure is the solution to a sparse linear program, which can be computed efficiently using interior point methods. We study the anti-monotonicity and other properties of this new measure, and relate it to the statistical power of a sample of embeddings in a network. We show experimentally that, in contrast to earlier overlap-graph based proposals, our support measure makes it feasible to mine subgraph patterns in large networks.
Journal: Data Mining and Knowledge Discovery
ISSN: 1384-5810
Issue: 3
Volume: 27
Pages: 444 - 477
Publication year:2013
BOF-keylabel:yes
IOF-keylabel:yes
BOF-publication weight:1
CSS-citation score:1
Authors from:Higher Education
Accessibility:Open