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Statistically-driven generation of multidimensional analytical schemas from linked data

机译:从链接数据统计驱动生成多维分析方案

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The ever-increasing Linked Data (LD) initiative has given place to open, large amounts of semi-structured and rich data published on the Web. However, effective analytical tools that aid the user in his/her analysis and go beyond browsing and querying are still lacking. To address this issue, we propose the automatic generation of multidimensional analytical stars (MDAS). The success of the multidimensional (MD) model for data analysis has been in great part due to its simplicity. Therefore, in this paper we aim at automatically discovering MD conceptual patterns that summarize LD. These patterns resemble the MD star schema typical of relational data warehousing. The underlying foundations of our method is a statistical framework that takes into account both concept and instance data. We present an implementation that makes use of the statistical framework to generate the MDAS. We have performed several experiments that assess and validate the statistical approach with two well-known and large LD sets. (C) 2016 Elsevier B.V. All rights reserved.
机译:不断增长的链接数据(LD)计划已经成为开放,发布在Web上的大量半结构化和丰富数据的地方。但是,仍然缺乏有效的分析工具来帮助用户进行分析,而不仅仅是浏览和查询。为了解决此问题,我们建议自动生成多维分析星(MDAS)。多维(MD)模型用于数据分析的成功很大程度上归因于其简单性。因此,本文旨在自动发现总结LD的MD概念模式。这些模式类似于关系数据仓库中典型的MD星型模式。我们方法的基础是一个统计框架,该框架考虑了概念和实例数据。我们提出一种利用统计框架生成MDAS的实现。我们已经进行了一些实验,以两个著名的大型LD集评估和验证统计方法。 (C)2016 Elsevier B.V.保留所有权利。

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