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EXTRACTION OF ASSOCIATION RULES USING BIG DATA TECHNOLOGIES

机译:利用大数据技术提取关联规则

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The large amount of information stored by companies and the rise of social networks and the Internet of Things are producing exponential growth in the amount of data being produced. Data analysis techniques must therefore be improved to enable all this information to be processed. One of the most commonly used techniques for extracting information in the data mining field is that of association rules, which accurately represent the frequent co-occurrence of items in a dataset. Although several methods have been proposed for mining association rules, these methods do not perform well in very large databases due to high computational costs and lack of memory problems. In this article, we address these problems by studying the current technologies for processing Big Data to propose a parallelization of the association rule mining process using Big Data technologies which implements an efficient algorithm that can handle massive amounts of data. This new algorithm is then compared with traditional association rule mining algorithms.
机译:公司存储的大量信息以及社交网络和物联网的兴起正在产生的数据量呈指数增长。因此,必须改进数据分析技术,以处理所有这些信息。关联规则是在数据挖掘领域中提取信息的最常用技术之一,它准确地代表了数据集中项目的频繁共现。尽管已经提出了几种用于挖掘关联规则的方法,但是由于计算成本高和缺乏内存问题,这些方法在非常大的数据库中效果不佳。在本文中,我们通过研究当前的处理大数据的技术来解决这些问题,以提出使用大数据技术的关联规则挖掘过程的并行化,该技术实现了可以处理大量数据的高效算法。然后将该新算法与传统的关联规则挖掘算法进行比较。

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