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Efficient Query Answering in Probabilistic RDF Graphs

机译:高效查询在概率RDF图中回答

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In this paper, we tackle the problem of efficiently answering queries on probabilistic RDF data graphs. Specifically, we model RDF data by probabilistic graphs, and an RDF query is equivalent to a search over subgraphs of probabilistic graphs that have high probabilities to match with a given query graph. To efficiently process queries on probabilistic RDF graphs, we propose effective pruning mechanisms, structural and probabilistic pruning. For the structural pruning, we carefully design synopses for vertex/edge labels by considering their distributions and other structural information, in order to improve the pruning power. For the probabilistic pruning, we derive a cost model to guide the pre-computation of probability upper bounds such that the query cost is expected to be low. We construct an index structure that integrates synopses/statistics for structural and probabilistic pruning, and propose an efficient approach to answer queries on probabilistic RDF graph data. The efficiency of our solutions has been verified through extensive experiments.
机译:在本文中,我们解决了有效地回答概率RDF数据图中查询的问题。具体地,我们通过概率图来模拟RDF数据,并且RDF查询等同于搜索具有高概率与给定查询图匹配的概率图的子图。为了有效地处理概率RDF图的查询,我们提出了有效的修剪机制,结构和概率修剪。对于结构修剪,我们通过考虑其分布和其他结构信息来仔细设计顶点/边缘标签的概要,以提高修剪功率。对于概率修剪,我们推出了一种成本模型来指导概率上限的预计算,使得查询成本预计将低。我们构建一个索引结构,它集成了结构和概率修剪的概要/统计,并提出了一种有效的方法来回答概率RDF图数据的查询。通过广泛的实验验证了我们解决方案的效率。

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