A Hybrid Integrated Model for Big Data Applications Based on Association Rules and Fuzzy Logic: A Review

hind raad, Murtadha M. Hamad
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引用次数: 0

Abstract

There is a real increasing in the generating of data from different sources. Data mining (DM) is a useful method to elicit valuable information. Association rule mining (ARM) can assist in finding patterns and trends in big data. Also fuzzy logic plays a main role as assistance technique in handling big data issues. This review paper produces recent literature on hybridization regarding the association rule mining or other DM methods such as classification and clustering and fuzzy logic techniques in big data. Whereas a hybrid model of association rule and fuzzy logic is suggested to get a valuable knowledge for big data applications at good accuracy and less time, with the aid of distributed framework for big data handling (Hadoop, Spark and MapReduce). Different techniques and algorithms were used in these works and evaluated according to accuracy, sensitivity, recall and run time with a various result as Specificity = 86%, Sensitivity = 80% and F-measure = 2.5, or achieving high accuracy and shorter runtime compared to other methods and 98.5accuraccy of fitness function in pruning redundant rules. At the end of the paper we present the most used and prominent techniques that assist in providing a useful and valuable knowledge in different domains from a huge, unstructured and even heterogeneous data. The paper will be beneficial to the researches who interesting in the field of mining big data.
基于关联规则和模糊逻辑的大数据应用混合集成模型综述
从不同来源生成的数据确实在增加。数据挖掘(DM)是一种获取有价值信息的有效方法。关联规则挖掘(ARM)可以帮助发现大数据中的模式和趋势。在处理大数据问题时,模糊逻辑作为辅助技术发挥着重要作用。本文综述了最近关于大数据中关联规则挖掘或其他DM方法(如分类聚类和模糊逻辑技术)中杂交的文献。而在大数据处理的分布式框架(Hadoop、Spark和MapReduce)的帮助下,建议采用关联规则和模糊逻辑的混合模型,以更高的准确性和更短的时间为大数据应用获取有价值的知识。这些研究使用了不同的技术和算法,并根据准确率、灵敏度、召回率和运行时间进行了评估,结果有特异性= 86%,灵敏度= 80%,F-measure = 2.5,或与其他方法相比准确率高,运行时间短,冗余规则裁剪的适应度函数准确率为98.5。在本文的最后,我们介绍了最常用和最突出的技术,这些技术有助于从巨大的、非结构化的甚至异构的数据中提供不同领域的有用和有价值的知识。本文将对大数据挖掘领域的研究人员有所裨益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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