基于张量的Polystore数据模型:在社交网络数据中的应用

É. Leclercq, M. Savonnet
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引用次数: 7

摘要

在本文中,我们将展示如何使用数学对象张量来构建用于在数据仓库中存储社交数据的多范式模型。从架构的角度来看,我们的方法允许连接不同的存储系统(polystore),并限制ETL工具执行模型转换所需的影响,以提供不同的分析算法。因此,系统可以在查询执行性能和数据表示的语义表达性方面利用多种数据模型。所提出的模型允许实现分析算法的数据和程序之间的逻辑独立性。通过对2017年法国总统大选期间Twitter消息病毒式传播的具体案例研究,我们强调了我们模型的一些贡献。
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A Tensor Based Data Model for Polystore: An Application to Social Networks Data
In this article, we show how the mathematical object tensor can be used to build a multi-paradigm model for the storage of social data in data warehouses. From an architectural point of view, our approach allows to link different storage systems (polystore) and limits the impact of ETL tools performing model transformations required to feed different analysis algorithms. Therefore, systems can take advantage of multiple data models both in terms of query execution performance and the semantic expressiveness of data representation. The proposed model allows to reach the logical independence between data and programs implementing analysis algorithms. With a concrete case study on message virality on Twitter during the French presidential election of 2017, we highlight some of the contributions of our model.
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