Analysing Computational Complexity For Prediction Function In Health Record Dataset

S. Sahunthala, A. Geetha, L. Parthiban
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引用次数: 2

Abstract

Nowadays, XML database growth plays a vital role in many real time applications. XML database contains a collection of XML dataset. More analytical functions are applied to XML database by using Xquery. In real world, huge businesses are exchanging the data as XML data model. In general, space and time parameters are considered for Xquery processing in the database. In existing, the analytical operation is analyzed in eXist-DB and BaseX databases with the execution time of ORBDA dataset. In existing system, the prediction analysis operation is not supposed in the dataset. In this paper, Xquery is processed by using Riak database. Riak database produces better execution time than eXist-DB and BaseX. This research has analyzed the prediction operation for ORBDA dataset using machine learning approach. This paper uses various regression techniques to analyze the prediction operation. Machine learning approaches produce better accuracy in prediction. The query processing time is reduced than the existing approach. This research uses ORBDA dataset in demonstration.
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健康记录数据集预测函数的计算复杂度分析
如今,XML数据库的增长在许多实时应用程序中起着至关重要的作用。XML数据库包含XML数据集的集合。通过使用Xquery将更多的分析功能应用到XML数据库中。在现实世界中,大型企业将数据作为XML数据模型进行交换。通常,空间和时间参数用于数据库中的Xquery处理。在eXist-DB和BaseX数据库中,以ORBDA数据集的执行时间对分析操作进行分析。在现有的系统中,数据集中不允许进行预测分析操作。本文使用Riak数据库对Xquery进行处理。Riak数据库的执行时间比eXist-DB和BaseX更好。本研究利用机器学习方法分析了ORBDA数据集的预测操作。本文运用各种回归技术对预测操作进行分析。机器学习方法可以提高预测的准确性。与现有方法相比,查询处理时间缩短了。本研究使用ORBDA数据集进行论证。
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