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DOGMA: A Disk-Oriented Graph Matching Algorithm for RDF Databases

机译:DOGMA:RDF数据库的面向磁盘的图匹配算法

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RDF is an increasingly important paradigm for the representation of information on the Web. As RDF databases increase in size to approach tens of millions of triples, and as sophisticated graph matching queries expressible in languages like SPARQL become increasingly important, scalability becomes an issue. To date, there is no graph-based indexing method for RDF data where the index was designed in a way that makes it disk-resident. There is therefore a growing need for indexes that can operate efficiently when the index itself resides on disk. In this paper, we first propose the DOGMA index for fast subgraph matching on disk and then develop a basic algorithm to answer queries over this index. This algorithm is then significantly sped up via an optimized algorithm that uses efficient (but correct) pruning strategies when combined with two different extensions of the index. We have implemented a preliminary system and tested it against four existing RDF database systems developed by others. Our experiments show that our algorithm performs very well compared to these systems, with orders of magnitude improvements for complex graph queries.
机译:对于Web上的信息表示,RDF越来越重要。随着RDF数据库的大小增加到接近三千万个三元组,并且随着以SPARQL之类的语言表达的复杂图形匹配查询变得越来越重要,可伸缩性成为一个问题。迄今为止,还没有针对RDF数据的基于图的索引方法,该索引的设计方式使其可以驻留在磁盘上。因此,人们越来越需要能够在索引本身驻留在磁盘上时有效运行的索引。在本文中,我们首先提出用于磁盘上子图快速匹配的DOGMA索引,然后开发一种基本算法来回答对该索引的查询。然后,通过与索引的两个不同扩展组合使用有效(但正确)修剪策略的优化算法,可以大大加快该算法的运行速度。我们已经实施了一个初步的系统,并已针对其他人开发的四个现有RDF数据库系统进行了测试。我们的实验表明,与这些系统相比,我们的算法性能非常好,对于复杂的图形查询,数量级的改进。

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