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首页> 外文期刊>Geoinformatica: An international journal of advances of computer science for geographic >Hub Labels on the database for large-scale graphs with the COLD framework
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Hub Labels on the database for large-scale graphs with the COLD framework

机译:数据库上的集线器标签与冷框架的大型图形

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摘要

AbstractShortest-path computation on graphs is one of the most well-studied problems in algorithmic theory. An aspect that has only recently attracted attention is the use of databases in combination with graph algorithms, so-called distance oracles, to compute shortest-path queries on large graphs. To this purpose, we propose a novel, efficient, pure-SQL framework for answering exact distance queries on large-scale graphs, implemented entirely on an open-source database engine. Our COLD framework (COmpressed Labels on the Database) can answer multiple distance queries (vertex-to-vertex, one-to-many,k-Nearest Neighbors, Reversek-Nearest Neighbors, Reversek-Farthest Neighbors and Top-kRange) not handled by previous methods, rendering it a complete database solution for a variety of practical large-scale graph applications. Our experimentation shows that COLD outperforms existing approaches (including popular graph databases) in terms of query time and efficiency, while requiring significantly less storage space than these methods.]]>
机译:<![cdata [<标题>抽象 ara>图表上的最短路径计算是算法理论中最熟练的问题之一。只有最近引起注意的一个方面是使用数据库与图算法,所谓的距离oracles的使用,以计算大图上的最短路径查询。为此目的,我们提出了一种新颖,有效的纯-SQL框架,用于在大型图形上应答精确距离查询,完全在开源数据库引擎上实现。我们的冷框架(数据库上的压缩标签)可以回答多个距离查询(顶点到顶点,一对多,<强调类型=“斜体”> K - 最邻居,反向<重点类型= “斜体”> k - 最终邻居,反向<重点类型=“斜体”> k - 最近邻居和顶部 - <重点类型=“斜体”> k 范围)未处理通过以前的方法,使其成为各种实用大规模图形应用程序的完整数据库解决方案。我们的实验表明,在查询时间和效率方面,冷酷的优于现有的方法(包括流行图数据库),同时需要比这些方法更少的存储空间。]>

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