Efficient Mining of Subsample-Stable Graph Patterns

2017 IEEE International Conference on Data Mining (ICDM)(2017)

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摘要
A scalable method for mining graph patterns stable under subsampling is proposed. The existing subsample stability and robustness measures are not antimonotonic according to definitions known so far. We study a broader notion of antimonotonicity for graph patterns, so that measures of subsample stability become antimonotonic. Then we propose gSOFIA for mining the most subsample-stable graph patterns. The experiments on numerous graph datasets show that gSOFIA is very efficient for discovering subsample-stable graph patterns.
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关键词
graph mining,subsample stability,Formal Concept Analysis
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