Extracting Graphs Properties with Semantic Joins

Yang Cao, W. Fan, Wenzhi Fu, Ruochun Jin, Weijie Ou, Wenliang Yi
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Abstract

This paper proposes an approach to querying a relational database $\mathcal{D}$ and a graph G taken together in SQL. We introduce a semantic extension of joins across $\mathcal{D}$ and G such that if a tuple t in $\mathcal{D}$ and a vertex v in G refer to the same real-world entity, then we join t and v to correlate their information and complement tuple t with additional properties of vertex v from the graph. Moreover, we extract hidden relationships between t and other entities by exploring paths from v. To support the semantic joins, we develop an extraction scheme based on LSTM, path clustering and ranking, to fetch important properties from graphs, and incrementally maintain the extracted data in response to updates. We also provide methods for implementing static joins when t is a tuple in $\mathcal{D}$, dynamic joins when t comes from the intermediate result of a sub-query, and heuristic joins to strike a balance between the complexity and accuracy. Using real-life data and queries, we experimentally verify the effectiveness, scalability and efficiency of the methods.
使用语义连接提取图形属性
本文提出了一种在SQL中同时查询关系数据库$\mathcal{D}$和图G的方法。我们在$\mathcal{D}$和G之间引入了连接的语义扩展,这样,如果$\mathcal{D}$中的元组t和G中的顶点v指向同一个现实世界的实体,那么我们连接t和v以关联它们的信息,并将元组t与图中顶点v的附加属性进行补充。此外,我们通过探索v的路径来提取t与其他实体之间的隐藏关系。为了支持语义连接,我们开发了一种基于LSTM、路径聚类和排序的提取方案,从图中获取重要属性,并根据更新增量维护提取的数据。当t是$\mathcal{D}$中的元组时,我们还提供了实现静态连接的方法,当t来自子查询的中间结果时实现动态连接的方法,以及在复杂性和准确性之间取得平衡的启发式连接的方法。通过实际数据和查询,实验验证了该方法的有效性、可扩展性和高效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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