Large-scale bisimulation of RDF graphs

SWIM '13 Pub Date : 2013-06-23 DOI:10.1145/2484712.2484713
A. Schätzle, Antony Neu, G. Lausen, Martin Przyjaciel-Zablocki
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引用次数: 31

Abstract

RDF datasets with billions of triples are no longer unusual and continue to grow constantly (e.g. LOD cloud) driven by the inherent flexibility of RDF that allows to represent very diverse datasets, ranging from highly structured to unstructured data. Because of their size, understanding and processing RDF graphs is often a difficult task and methods to reduce the size while keeping as much of its structural information become attractive. In this paper we study bisimulation as a means to reduce the size of RDF graphs according to structural equivalence. We study two bisimulation algorithms, one for sequential execution using SQL and one for distributed execution using MapReduce. We demonstrate that the MapReduce-based implementation scales linearly with the number of the RDF triples, allowing to compute the bisimulation of very large RDF graphs within a time which is by far not possible for the sequential version. Experiments based on synthetic benchmark data and real data (DBPedia) exhibit a reduction of more than 90% of the size of the RDF graph in terms of the number of nodes to the number of blocks in the resulting bisimulation partition.
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RDF图的大规模双模拟
拥有数十亿个三元组的RDF数据集不再罕见,并且在RDF固有的灵活性的驱动下不断增长(例如LOD云),RDF允许表示非常多样化的数据集,从高度结构化到非结构化数据。由于RDF图的大小,理解和处理RDF图通常是一项困难的任务,而减少其大小同时保留尽可能多的结构信息的方法变得有吸引力。本文研究了基于结构等价的双模拟方法来减少RDF图的大小。我们研究了两种双仿真算法,一种用于使用SQL进行顺序执行,另一种用于使用MapReduce进行分布式执行。我们演示了基于mapreduce的实现随着RDF三元组的数量线性扩展,允许在一段时间内计算非常大的RDF图的双模拟,这对于顺序版本来说是迄今为止不可能的。基于合成基准数据和真实数据(DBPedia)的实验显示,就所得双模拟分区中的节点数量到块数量而言,RDF图的大小减少了90%以上。
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