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A New Scale for Attribute Dependency in Large Database Systems

机译:大型数据库系统中属性依赖的新尺度

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摘要

Large, data centric applications are characterized by its different attributes. In modern day, a huge majority of the large data centric applications are based on relational model. The databases are collection of tables and every table consists of numbers of attributes. The data is accessed typically through SQL queries. The queries that are being executed could be analyzed for different types of optimizations. Analysis based on different attributes used in a set of query would guide the database administrators to enhance the speed of query execution. A better model in this context would help in predicting the nature of upcoming query set. An effective prediction model would guide in different applications of database, data warehouse, data mining etc. In this paper, a numeric scale has been proposed to enumerate the strength of associations between independent data attributes. The proposed scale is built based on some probabilistic analysis of the usage of the attributes in different queries. Thus this methodology aims to predict future usage of attributes based on the current usage.
机译:以数据为中心的大型应用程序具有不同的属性。当今,绝大多数以大数据为中心的应用程序都是基于关系模型的。数据库是表的集合,每个表都包含许多属性。通常通过SQL查询访问数据。可以针对不同类型的优化来分析正在执行的查询。基于一组查询中使用的不同属性的分析将指导数据库管理员提高查询执行的速度。在这种情况下,更好的模型将有助于预测即将到来的查询集的性质。一个有效的预测模型将指导数据库,数据仓库,数据挖掘等不同应用程序的使用。在本文中,提出了一种数字量表来枚举独立数据属性之间的关联强度。提议的量表是基于对不同查询中属性使用情况的一些概率分析而建立的。因此,该方法旨在基于当前用法来预测属性的未来用法。

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