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Associative Classification Common Research Challenges

机译:关联分类常见的研究挑战

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Association rule mining involves discovering concealed correlations among variables often from sales transactions to help managers in key business decision involving items shelving, sales and planning. In the last decade, association rule mining methods have been employed in deriving rules from classification dataset in different business domains. This has resulted in an emergence of new classification approach called Associative Classification (AC), which often produces higher predictive classifiers than classic approaches such as decision trees, greedy and rule induction. Nevertheless, AC suffers from noticeable challenges some of which have been inherited from association rules and others have been resulted from building the classifier phase. These challenges are not limited to the massive numbers of candidate ruleitems found, the very large classifiers derived, the inability to handle multi-label datasets, and the design of rule pruning, ranking and prediction procedures. This article highlights and critically analyzes common challenges faced by AC algorithms that are still sustained. Hence, it opens the door for interested researchers to further investigate these challenges hoping to enhance the overall performance of this approach and increase it applicability in research domains.
机译:关联规则挖掘涉及发现经常来自销售交易的变量之间的隐蔽关联,以帮助管理人员做出涉及货架,销售和计划的关键业务决策。在过去的十年中,已经使用关联规则挖掘方法从不同业务域中的分类数据集中导出规则。这导致出现了一种称为关联分类(AC)的新分类方法,该方法通常比经典方法(例如决策树,贪婪和规则归纳)产生更高的预测分类器。尽管如此,AC仍面临明显的挑战,其中一些挑战是从关联规则继承的,其他挑战则是建立分类器阶段的结果。这些挑战不仅限于找到的大量候选规则项,派生的非常大的分类器,无法处理多标签数据集以及规则修剪,排名和预测程序的设计。本文重点介绍并严格分析了仍然持续存在的交流算法所面临的常见挑战。因此,它为感兴趣的研究人员敞开了大门,以期进一步研究这些挑战,以期增强这种方法的整体性能并提高其在研究领域中的适用性。

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