关联规则挖掘的改进Meerkat Clan算法

IF 1.2 Q3 MULTIDISCIPLINARY SCIENCES
Mohamad Ab. Saleh, Ahmed T. Sadiq Sadiq
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引用次数: 0

摘要

关联规则挖掘(ARM)是重要的数据挖掘技术之一。研究人员以前研究的经典方法已经无法处理数据库的稳定增长,这促使我们使用基于元主义的关联规则挖掘过程,在我们的工作中,所有正确的规则都会被提取出来,并且挖掘不局限于高质量的规则。基于群体智能的方法就是其中之一。本文提出了一种基于关联规则挖掘的修正Meerkat Clan (MCC-ARM)算法。该算法基本上依赖于Meerkat Clan algorithm (MCA)。最大的好处是MCA中候选解决方案的多样性。在我们的工作中,将使用两种方法来表示规则,这两种方法借鉴了遗传算法;在第一个模型中,每组规则都指的是社会中的物体,这个物体被称为匹兹堡;而第二个规则则是指社会上一个叫做密歇根的物体。提出的算法旨在检查正确关联规则的最大可能数量。所谓算法遵循定义有效搜索区域的方法,依靠一种主要的随机机制引导算法提取可选规则,避免总解受同一规则的引导,从而产生了很大的多样性。此外,mc - arm在邻接搜索过程中采用了冷凝方法,防止算法陷入局部模式。为了证明其有效性,需要在四个可靠的数据集(即Zoo, German Credit, Primary Tumor和Chess)上进行应用。该算法所带来的增强得到了两个关键因素,即正确规则数和质量适应度值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified Meerkat Clan Algorithm for Association Rules Mining
Association Rules Mining (ARM) forms one of the important data mining techniques. The classical methods that were previously worked on by researchers have become ineffective to deal with the steady growth of databases, which prompted us to use the mining process for association rules based on metahuristic, and in our work all the correct rules will extracted, and mining is not limited to high-quality rules. Swarm intelligence based is one of these methods. In this paper, Modified Meerkat Clan for Association Rules Mining (MCC-ARM) has been proposed. Basically, the proposed algorithm depends on Meerkat Clan Algorithm (MCA). The greatest benefit is the diversity of candidate solutions in MCA. In our work the rules will represented using two methods which are borrowed from the genetic algorithm; in the first one each group of rules refers to object in society which is called Pittsburgh; while the second one each rule refers to an object in society which is called Michigan. The proposed algorithm aims to inspect for the maximum possible number of correct association rules. The so-called algorithm follows the approach of defining the effective search area, which depends on a main random mechanism to lead the algorithm in extracting alternative rules and avoiding total solutions from being guided by the same rule, and this led to a great deal of diversity. In addition, the MCC-ARM uses condensation method in the adjacency search process to prevent the algorithm from falling into the local mode. In order to prove their efficiency, it should be applied on four reliable datasets (i.e. Zoo, German Credit, Primary Tumor and Chess). The enhancement brought about by the proposed algorithm has obtained two crucial factors, namely on the number of correct rules and quality fitness value.
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来源期刊
Baghdad Science Journal
Baghdad Science Journal MULTIDISCIPLINARY SCIENCES-
CiteScore
2.00
自引率
50.00%
发文量
102
审稿时长
24 weeks
期刊介绍: The journal publishes academic and applied papers dealing with recent topics and scientific concepts. Papers considered for publication in biology, chemistry, computer sciences, physics, and mathematics. Accepted papers will be freely downloaded by professors, researchers, instructors, students, and interested workers. ( Open Access) Published Papers are registered and indexed in the universal libraries.
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