Riesen Kaspar, Bunke Horst
Institute of Computer Science and Applied Mathematics, University of Bern, Bern, Switzerland.
IEEE Trans Syst Man Cybern B Cybern. 2009 Dec;39(6):1472-83. doi: 10.1109/TSMCB.2009.2019264. Epub 2009 May 12.
In pattern recognition and related fields, graph-based representations offer a versatile alternative to the widely used feature vectors. Therefore, an emerging trend of representing objects by graphs can be observed. This trend is intensified by the development of novel approaches in graph-based machine learning, such as graph kernels or graph-embedding techniques. These procedures overcome a major drawback of graphs, which consists of a serious lack of algorithms for classification. This paper is inspired by the idea of representing graphs through dissimilarities and extends our previous work to the more general setting of Lipschitz embeddings. In an experimental evaluation, we empirically confirm that classifiers that rely on the original graph distances can be outperformed by a classification system using the Lipschitz embedded graphs.
在模式识别及相关领域,基于图的表示法为广泛使用的特征向量提供了一种通用的替代方案。因此,可以观察到一种通过图来表示对象的新兴趋势。基于图的机器学习中新型方法(如图核或图嵌入技术)的发展加剧了这一趋势。这些方法克服了图的一个主要缺点,即严重缺乏分类算法。本文受到通过差异来表示图这一思想的启发,并将我们之前的工作扩展到更一般的利普希茨嵌入设置。在实验评估中,我们通过实证证实,依赖原始图距离的分类器可能会被使用利普希茨嵌入图的分类系统超越。