Extracting and summarizing the frequent emerging graph patterns from a dataset of graphs

被引:0
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作者
Guillaume Poezevara
Bertrand Cuissart
Bruno Crémilleux
机构
[1] Université de Caen Basse-Normandie,Laboratoire GREYC
关键词
Data mining; Emerging patterns; Condensed representation; Subgraph isomorphism; Chemical information;
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学科分类号
摘要
Emerging patterns are patterns of great interest for discovering information from data and characterizing classes. Mining emerging patterns remains a challenge, especially with graph data. In this paper, we propose a method to mine the whole set of frequent emerging graph patterns, given a frequency threshold and an emergence threshold. Our results are achieved thanks to a change of the description of the initial problem so that we are able to design a process combining efficient algorithmic and data mining methods. Moreover, we show that the closed graph patterns are a condensed representation of the frequent emerging graph patterns and we propose a new condensed representation based on the representative pruned graph patterns: by providing shorter patterns, it is especially dedicated to represent a set of graph patterns. Experiments on a real-world database composed of chemicals show the feasibility and the efficiency of our approach.
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页码:333 / 353
页数:20
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