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SYNTHG: Mimicking RDF Graphs Using Tensor Factorization

机译:Synthg:使用张量分解模拟RDF图形

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There is a need for synthetic graphs to help benchmarking efforts. Synthetic graphs that mimic real-world graphs can be used to avoid sending sensitive information to third parties while preserving topological characteristics of the input original graph. They can also be used to evaluate the scalability of different algorithms since the size of synthetic graphs can be scaled. In view of these applications, we introduce a novel approach to mimik RDF graphs. Our approach introduces a random rotation in the tensor factorization of the input RDF graph. By combining this matrix with the core tensor computed by the factorization, our approach can generate a graph which maintains the querying characteristics of the input graph, while not permitting a reconstruction of the input graph. We use Semantic Web Dog Food and DBpedia 2016 to evaluate our approach and compare the original, reconstructed and synthetic graphs by using them to benchmark five triple stores. The results show that the Pearson correlation between the performance of the triple stores under original and synthetic graphs is 0.91, 0.64 for Semantic Web Dog Food and DBpedia respectively. Our results also suggest that the synthetic graphs inherit the main graph characteristics of the original graphs. SynthG is open-source and is available at: https://github.com/dice-group/SynthG
机译:有必要为合成图,以帮助标杆努力。合成图形,模拟真实世界的图表可以用来避免将敏感信息透露给第三方,同时保留输入原始图的拓扑特征。它们也可以用于评估不同的算法可扩展性,因为合成图的大小可以缩放。鉴于这些应用中,我们介绍了一种新的方法来mimik RDF图。我们的方法介绍了输入RDF图的张量分解随机轮换。由该矩阵与由因式分解计算的核心张量相结合,我们的方法可以生成其保持输入图的查询特征,而不允许所述输入图的重建的曲线图。我们使用语义Web狗粮和DBpedia的2016年评估我们的方法,并利用它们来基准5个三店比较原始,重建和合成图。结果表明,三店在原有的和合成的图形性能之间的Pearson相关系数分别为0.91,0.64的语义Web狗粮和DBpedia中。我们的研究结果还表明,合成图继承原始图的主要特征图。 SynthG是开源和可在:https://github.com/dice-group/SynthG

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