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摘要

由于具有时间特征和空间特征的RDF数据越来越多,如何在RDF数据集上高效地查询时空RDF数据是一个重要的任务。在本文中,时空RDF数据包含时间特征、空间特征和文本特征,为了便于查询,它们被分别处理。同时设计了分解图算法和组合查询路径算法。将具有时空特征的查询图分割成多条路径,然后利用查询图中的每条路径在数据图中包含的路径集中搜索最优匹配路径。由于不准确匹配的存在,根据评价函数进行近似匹配,寻找最佳匹配路径。最后,将所有最佳路径进行组合,生成匹配结果图。我们的方法从近似性能和查询性能两方面进行了评估。实验结果表明了该方法的有效性和高效性
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Approximate Matching of Spatiotemporal RDF Data by Path
Due to an ever-increasing number of RDF data with time features and space features, it is an important task to query efficiently spatiotemporal RDF data over RDF datasets. In this paper, the spatiotemporal RDF data contains time features, space features and text features, which are processed separately to facilitate query. Meanwhile the decomposition graph algorithm and the combination query paths algorithm are designed. The query graph with spatiotemporal features is split into multiple paths, and then every path in the query graph is used to search for the best matching path in the path sets contained in the data graph. Due to the existence of inaccurate matchings, approximate matchings are performed according to the evaluation function to find the best matching path. Finally, all the best paths are combined to generate a matching result graph. Our approach is evaluated from approximate performances and query performances. The experimental results show that the effectiveness and efficiency of our method
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