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Most Influential KDD 2005 Paper · 2026-03 edition

On Mining Cross-graph Quasi-cliques

Jian Pei; Daxin Jiang; Aidong Zhang

Venue
ACM SIGKDD Conference (KDD) 2005
Recognition
Most Influential KDD 2005 Paper (Rank No. 10)
Edition
2026-03
Impact factor
6
Certificate ID
77d877f1bd427822

Abstract

Joint mining of multiple data sets can often discover interesting, novel, and reliable patterns which cannot be obtained solely from any single source. For example, in cross-market customer segmentation, a group of customers who behave similarly in multiple markets should be considered as a more coherent and more reliable cluster than clusters found in a single market. As another example, in bioinformatics, by joint mining of gene expression data and protein interaction data, we can find clusters of genes which show coherent expression patterns and also produce interacting proteins. Such clusters may be potential pathways.In this paper, we investigate a novel data mining problem, <i>mining cross-graph quasi-cliques</i>, which is generalized from several interesting applications such as cross-market customer segmentation and joint mining of gene expression data and protein interaction data. We build a general model for mining cross-graph quasi-cliques, show why the complete set of cross-graph quasi-cliques cannot be found by previous data mining methods, and study the complexity of the problem. While the problem is difficult, we develop an efficient algorithm, <i>Crochet</i>, which exploits several interesting and effective techniques and heuristics to efficaciously mine cross-graph quasi-cliques. A systematic performance study is reported on both synthetic and real data sets. We demonstrate some interesting and meaningful cross-graph quasi-cliques in bioinformatics. The experimental results also show that algorithm <i>Crochet</i> is efficient and scalable.

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