垂直关联规则挖掘:使用关系DBMS的案例研究实现

Wan Aezwani Bt Wan Abu Bakar, Z. Abdullah, Md Yazid B. Md Saman, Masita Masila Bt Abd Jalil, M. Man, T. Herawan
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引用次数: 2

摘要

数据挖掘是知识发现与数据库(Knowledge Discovery and Database, KDD)中最重要的研究领域之一。再深入一点,关联规则挖掘(Association Rule Mining, ARM)是检测模式分析(尤其是关键业务决策)中最突出的领域之一。它旨在从事务数据库或其他数据存储库中的一组项目中提取有趣的相关性、频繁的模式、关联或随意的结构。尽管大多数数据存储库都处理平面文件,但当前的趋势是使用关系数据库管理系统(DBMS)对数据进行更系统化和结构化的管理。鉴于采用关系数据库的重要性,本文采用MySQL (My Structured Query Language,我的结构化查询语言)作为关联规则挖掘数据库引擎,对频繁项集挖掘(FIMI)在线存储库中的基准密集数据集进行测试。我们的研究重点是Eclat算法及其变体在生成频繁和有趣规则方面的研究,作为我们之前研究的延续。性能结果显示了一个有希望的信号,以确认关系数据库机制在存储任何事务数据方面的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vertical Association Rule Mining: Case study implementation with relational DBMS
Data mining remains as one of the most important research domain in Knowledge Discovery and Database (KDD). Moving deeper, Association Rule Mining (ARM) is one of the most prominent areas in detecting pattern analysis especially for crucial business decision making. It aims to extract interesting correlations, frequent patterns, association or casual structures among set of items in the transaction databases or other data repositories. Even though most of these data repositories are dealing with flat files, current trend is focusing on using relational Database Management System (DBMS) for the more systematic and structured management of data. In response to the importance of adopting relational database, in this paper we implement MySQL (My Structured Query Language) as our association rule mining database engine in testing benchmark dense datasets which available from Frequent Itemset Mining (FIMI) online repository. Our study is focusing on Eclat algorithm as well as its variants in generating frequent and interesting rule, as a continual from our previous studies. The performance result shows a promising signal as to confirm on the benefits of relational database mechanism in storing any transaction data.
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