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Table2Graph: A Scalable Graph Construction from Relational Tables Using Map-Reduce

机译:Table2Graph:使用Map-Reduce从关系表构建可伸缩图

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Identifying correlations and relationships between entities within and across different data sets (or databases) is of great importance in many domains. The data warehouse-based integration, which has been most widely practiced, is found to be inadequate to achieve such a goal. Instead we explored an alternate solution that turns multiple disparate data sources into a single heterogeneous graph model so that matching between entities across different source data would be expedited by examining their linkages in the graph. We found, however, while a graph-based model provides outstanding capabilities for this purposes, construction of one such model from relational source databases were time consuming and primarily left to ad hoc proprietary scripts. This led us to develop a reconfigurable and reusable graph construction tool that is designed to work at scale. In this paper, we introduce Table2Graph, the graph construction tool based on Map-Reduce framework over Hadoop. We also discuss results from applying Table2Graph to integrate disparate healthcare databases.
机译:在许多领域中,识别不同数据集(或数据库)之内和之间的实体之间的关联和关系非常重要。已经发现,已被广泛采用的基于数据仓库的集成不足以实现这一目标。相反,我们探索了一种替代解决方案,该解决方案将多个不同的数据源转换为单个异构图形模型,从而可以通过检查图形中的链接来加快跨不同源数据的实体之间的匹配。但是,我们发现,尽管基于图形的模型为此目的提供了出色的功能,但是从关系源数据库构建这样一个模型非常耗时,并且主要留给了专门的专有脚本。这促使我们开发了一种可大规模配置的可重配置和可重用的图形构造工具。在本文中,我们介绍了Table2Graph,它是基于Hadoop的基于Map-Reduce框架的图形构建工具。我们还将讨论通过使用Table2Graph集成不同的医疗保健数据库而获得的结果。

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