Data Integration Progression in Large Data Source Using Mapping Affinity

Bazeer Ahamed B, T. Ramkumar, S. Hariharan
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引用次数: 20

Abstract

Many kind of pattern integration need to be effectively analyzed in large data which require extremely accurate pattern. Data integration is the problem of combining data residing at different sources, and providing the user with a unified view of these data. Existing patterns integration extracts low quality of pattern mapping in large databases and the systems focus only on identifying useful patterns at the attribute-value level. We propose a generalized technique to enable seamless integration of Multiple Data Sources It improves the quality of pattern reorganization significantly. Finally, experiments are conducted on few datasets, and the results of the experiments show that our method is useful and efficient.
利用映射亲和力实现大型数据源中的数据整合进展
许多类型的模式整合都需要对需要极其精确模式的大型数据进行有效分析。数据整合是将不同来源的数据结合起来,并为用户提供这些数据的统一视图的问题。现有的模式集成提取大型数据库中的低质量模式映射,而且系统只关注在属性-值层面识别有用的模式。我们提出了一种通用技术来实现多数据源的无缝整合,它能显著提高模式重组的质量。最后,我们在几个数据集上进行了实验,实验结果表明我们的方法是有用和高效的。
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