定量关联规则挖掘技术的发展趋势

D. Adhikary, Swarup Roy
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引用次数: 15

摘要

关联规则挖掘(ARM)技术可以有效地提取各种数据库中数据项之间的频繁模式和隐藏关联。这些技术被广泛用于学习行为、预测事件和在各个层面上做出决策。然而,传统的ARM技术仅限于包含分类数据的数据库,而现实世界中的数据库大多在商业和科学领域具有包含定量数据的属性。因此,使用一种称为定量关联规则挖掘(QARM)的临时方法来帮助从现实世界的定量数据库中发现隐藏的关联。在本文中,我们对QARM研究的趋势进行了详尽的讨论,并进一步根据它们采用的计算方法类型对现有技术进行了系统的分类。我们对迄今为止提出的各种方法进行了批判性分析,并对它们进行了理论比较研究。我们还列举了一些在未来的研究中需要解决的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trends in quantitative association rule mining techniques
Association rule mining (ARM) techniques are effective in extracting frequent patterns and hidden associations among data items in various databases. These techniques are widely used for learning behavior, predicting events and making decisions at various levels. The conventional ARM techniques are however limited to databases comprising categorical data only whereas the real-world databases mostly in business and scientific domains have attributes containing quantitative data. Therefore, an improvised methodology called Quantitative Association Rule Mining (QARM) is used that helps discovering hidden associations from the real-world quantitative databases. In this paper, we present an exhaustive discussion on the trends in QARM research and further make a systematic classification of the available techniques into different categories based on the type of computational methods they adopted. We perform a critical analysis of various methods proposed so far and present a theoretical comparative study among them. We also enumerate some of the issues that needs to be addressed in future research.
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