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Publication Detail
Discriminative frequent subgraph mining with optimality guarantees
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Publication Type:Journal article
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Publication Sub Type:Journal Article
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Authors:Thoma M, Cheng H, Gretton A, Han J, Kriegel HP, Smola A, Song L, Yu PS, Yan X, Borgwardt KM
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Publication date:01/01/2010
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Pagination:302, 318
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Journal:Statistical Analysis and Data Mining
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Volume:3
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Issue:5
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Status:Published
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Print ISSN:1932-1872
Abstract
The goal of frequent subgraph mining is to detect subgraphs that frequently occur in a dataset of graphs. In classification settings, one is often interested in discovering discriminative frequent subgraphs, whose presence or absence is indicative of the class membership of a graph. In this article, we propose an approach to feature selection on frequent subgraphs, called CORK, that combines two central advantages. First, it optimizes a submodular quality criterion, which means that we can yield a near-optimal solution using greedy feature selection. Second, our submodular quality function criterion can be integrated into gSpan, the state-of-the-art tool for frequent subgraph mining, and help to prune the search space for discriminative frequent subgraphs even during frequent subgraph mining. © 2010 Wiley Periodicals, Inc. Statistical Analysis and Data Mining 3: 302-318, 2010.
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