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Classifier Ensembles for Vector Space Embedding of Graphs

机译:图向量空间嵌入的分类器集合

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摘要

Classifier ensembles aim at a more accurate classification than single classifiers. Different approaches to building classifier ensembles have been proposed in the statistical pattern recognition literature. However, in structural pattern recognition, classifier ensembles have been rarely used. In this paper we introduce a general methodology for creating structural classifier ensembles. Our representation formalism is based on graphs and includes strings and trees as special cases. In the proposed approach we make use of graph embedding in real vector spaces by means of prototype selection. Since we use randomized prototype selection, it is possible to generate n different vector sets out of the same underlying graph set. Thus, one can train an individual base classifier for each vector set und combine the results of the classifiers in an appropriate way. We use extended support vector machines for classification and combine them by means of three different methods. In experiments on semi-artificial and real data we show that it is possible to outperform the classification accuracy obtained by single classifier systems in the original graph domain as well as in the embedding vector spaces.
机译:分类器集合的目标是比单个分类器更准确的分类。在统计模式识别文献中已经提出了构建分类器集合的不同方法。但是,在结构模式识别中,很少使用分类器集成。在本文中,我们介绍了一种用于创建结构分类器集成的通用方法。我们的表示形式主义是基于图的,并且包括字符串和树作为特殊情况。在提出的方法中,我们利用原型选择的方法将图形嵌入在真实的向量空间中。由于我们使用随机原型选择,因此可以从同一基础图集中生成n个不同的向量集。因此,可以为每个向量集训练一个单独的基本分类器,并以适当的方式组合分类器的结果。我们使用扩展的支持向量机进行分类,并通过三种不同的方法将它们组合在一起。在半人工和真实数据的实验中,我们表明在原始图域以及嵌入向量空间中,有可能优于单个分类器系统获得的分类精度。

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