基于模式图相似度的大型RDF图个性化关键字搜索

S. Sinha, Xinge Lu, D. Theodoratos
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引用次数: 8

摘要

不断增加的大型RDF存储库的结构太复杂,不允许非专业用户从中提取有用的信息。关键字搜索是一种有趣的替代方法,但在RDF图数据的上下文中,查询答案是RDF图片段,它面临两个主要问题:查询质量回答问题和结果计算算法的可伸缩性问题。在本文中,我们着重于通过利用个性化信息来增强RDF数据的关键字搜索能力。我们提出了一种新颖的方法,利用RDF图的结构摘要为输入关键字查询生成模式图。模式图是结构化的连接查询,可以看作是对非结构化关键字查询的可能解释。个性化信息表示为概要图的集合,这是一个类似于模式图的概念。通过测量用户概要图与生成的模式图之间的图相似度来实现结果的排序。引入了新的相似度度量,它考虑了内在和外在相似度,并考虑了模式和轮廓图的结构和语义特征。实验结果表明,我们的方法可以解决阻碍RDF数据上关键字搜索广泛使用的两个主要问题。
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Personalized Keyword Search on Large RDF Graphs based on Pattern Graph Similarity
The structure of the ever increasing large RDF repositories is too complex to allow non-expert users extract useful information from them. Keyword search is an interesting alternative but in the context of RDF graph data, where query answers are RDF graph fragments, itfaces two major problems: the query quality answer problem and the result computation algorithm scalability problem. In this paper we focus on empowering keyword search on RDF data by exploiting personalized information. We proposean original approach which exploits the structural summary of the RDF graph to generate pattern graphs for the input keyword query. Pattern graphs are structured conjunctive queries and are seen as possible interpretations of the unstructured keyword query. Personalized information is represented as collections of profile graphs, a concept similar to pattern graphs. The ran king of the results is achieved by measuring graph similarity between the user profile graph and the generated pattern graphs. Novel similarity metrics have been introduced which consider intrinsic and extrinsic similarity and take into account both structural and semantic characteristics of the pattern and profile graphs. Effectiveness and efficiency experimental results show that our approach can tackle the two major problems that hinder the widespread use of keyword search on RDF data.
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