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Graph Kernels for RDF Data

机译:RDF数据的图形核

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摘要

The increasing availability of structured data in Resource Description Framework (RDF) format poses new challenges and opportunities for data mining. Existing approaches to mining RDF have only focused on one specific data representation, one specific machine learning algorithm or one specific task. Kernels, however, promise a more flexible approach by providing a powerful framework for decoupling the data representation from the learning task. This paper focuses on how the well established family of kernel-based machine learning algorithms can be readily applied to instances represented as RDF graphs. We first review the problems that arise when conventional graph kernels are used for RDF graphs. We then introduce two versatile families of graph kernels specifically suited for RDF, based on intersection graphs and intersection trees. The flexibility of the approach is demonstrated on two common relational learning tasks: entity classification and link prediction. The results show that our novel RDF graph kernels used with Support Vector Machines (SVMs) achieve competitive predictive performance when compared to specialized techniques for both tasks.
机译:资源描述框架(RDF)格式的结构化数据的可用性不断提高,这为数据挖掘提出了新的挑战和机遇。现有的挖掘RDF的方法仅关注一种特定的数据表示,一种特定的机器学习算法或一种特定的任务。但是,内核提供了一个强大的框架,可以保证将数据表示与学习任务分离,从而提供了一种更加灵活的方法。本文着重介绍如何将完善的基于内核的机器学习算法家族轻松应用于以RDF图表示的实例。我们首先回顾一下将常规图形内核用于RDF图时出现的问题。然后,我们基于交集图和交集树,介绍两个特别适用于RDF的通用图形内核系列。在两种常见的关系学习任务上展示了该方法的灵活性:实体分类和链接预测。结果表明,与用于两种任务的专用技术相比,与支持向量机(SVM)一起使用的新颖RDF图形内核具有竞争性的预测性能。

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