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A Fast Approximation of the Weisfeiler-Lehman Graph Kernel for RDF Data

机译:RDF数据的Weisfeiler-Lehman图核的快速逼近

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In this paper we introduce an approximation of the Weisfeiler-Lehman graph kernel algorithm aimed at improving the computation time of the kernel when applied to Resource Description Framework (RDF) data. Typically, applying graph kernels to RDF is done by extracting subgraphs from a large RDF graph and computing the kernel on this set of subgraphs. In contrast, our algorithm computes the Weisfeiler-Lehman kernel directly on the large RDF graph, but still retains the subgraph information. We show that this algorithm is faster than the regular Weisfeiler-Lehman kernel for RDF data and has at least the same performance. Furthermore, we show that our method has similar or better performance, and is faster, than other recently introduced graph kernels for RDF.
机译:在本文中,我们介绍了Weisfeiler-Lehman图内核算法的一种近似方法,旨在缩短将其应用于资源描述框架(RDF)数据时的内核计算时间。通常,将图形内核应用于RDF是通过从大型RDF图提取子图并在这组子图上计算内核来完成的。相反,我们的算法直接在大型RDF图上计算Weisfeiler-Lehman内核,但仍保留子图信息。我们证明,对于RDF数据,该算法比常规的Weisfeiler-Lehman内核要快,并且至少具有相同的性能。此外,我们证明,与其他最近为RDF引入的图形内核相比,我们的方法具有相似或更好的性能,并且速度更快。

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