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A new proposal for graph classification using frequent geometric subgraphs

机译:使用频繁几何子图进行图分类的新建议

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Geometric graph mining has been identified as a need in many applications. This technique detects recurrent patterns in data taking into account some geometric distortions. To meet this need, some graph miners have been developed for detecting frequent geometric subgraphs. However, there are few works that attend to actually apply this kind of pattern as feature for classification tasks. In this paper, a new geometric graph miner and a framework, for using frequent geometric subgraphs in classification, are proposed. Our solution was tested in the already reported AIDS database. The experimentation shows that our proposal gets better results than graph-based classification using non-geometric graph miners.
机译:几何图形挖掘已被确定为许多应用程序中的需求。该技术在考虑到某些几何失真的情况下检测数据中的重复模式。为了满足这一需求,已经开发了一些图挖掘器来检测频繁的几何子图。但是,很少有作品可以真正将这种模式用作分类任务的功能。本文提出了一种新的几何图挖掘器和框架,用于在分类中使用频繁的几何子图。我们的解决方案已经在已经报告的艾滋病数据库中进行了测试。实验表明,与使用非几何图挖掘器进行基于图的分类相比,我们的建议获得了更好的结果。

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