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云计算环境下海量数据挖掘的研究 被引量:1

Study on massive data mining based on the cloud computing environment
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摘要 传统的数据挖掘模式和方法已经不能适应如今数据的快速增长,分析了将传统数据挖掘算法与云计算技术相结合的实现过程。通过研究云计算环境下海量数据挖掘的三层模型,发现该模型最大的优点是数据挖掘速度快、可靠性高,而且随着数据量的增加,该模型的优势也愈发明显。 The traditional mode and method of data mining are unable to adapt to the rapid growth of data. The traditional data mining algorithm is analyzed to realize the process of combining with the cloud computing technology. Through the research of massive data mining three layer model based on the cloud computing environment, the advantages of this model are its rapid speed and high accuracy of the data mining. With the increasing of data quantity, the superiority of this model is getting more obvious.
作者 谢志明
出处 《计算机时代》 2015年第2期4-6,共3页 Computer Era
基金 汕尾职业技术学院2014年度院级精品资源共享课题(swzyjpkc14002)
关键词 云计算 传统数据挖掘 算法 海量数据挖掘 模型 cloud computing traditional data mining algorithm massive data mining model
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