...
【24h】

Building a highly-compact and accurate associative classifier

机译:构建高度紧凑且准确的关联分类器

获取原文
获取原文并翻译 | 示例
           

摘要

Associative classification has aroused significant research attention in recent years due to its advantage in rule forms with satisfactory accuracy. However, the rules in associative classifiers derived from typical association rule mining (e.g., Apriori-type) may easily become too many to be understood and even be sometimes redundant or conflicting. To deal with these issues of concern, a recently proposed approach (i.e., GARC) appears to be superior to other existing approaches (e.g., C4.5-type, NN, SVM, CBA) in two respects: one is its classification accuracy that is equally satisfactory; the other is the compactness that the generated classifier is constituted with much fewer rules. Along with this line of methodological thinking, this paper presents a novel GARC-type approach, namely GEAR, to build an associative classifier with three distinctive and desirable features. First, the rules in the GEAR classifier are more intuitively appealing; second, the GEAR classification accuracy is improved or at least as good as others; and third, the GEAR classifier is significantly more compact in size. In doing so, a number of notions including rule redundancy and compact set are provided, together with related properties that could be incorporated into the rule mining process as algorithmic pruning strategies. The experimental results with benchmarking datasets also reveal that GEAR outperforms GARC and other approaches in an effective manner.
机译:关联分类由于其规则形式的优势和令人满意的准确性而引起了近年来的研究关注。但是,从典型的关联规则挖掘中导出的关联分类器中的规则(例如,Apriori型)可能容易变得太多而难以理解,甚至有时是多余的或冲突的。为了解决这些令人关注的问题,最近提出的方法(即GARC)似乎在两个方面优于其他现有方法(例如C4.5型,NN,SVM,CBA):一是其分类准确性同样令人满意;另一个是紧凑性,即生成的分类器由更少的规则构成。沿着这种方法论思路,本文提出了一种新颖的GARC类型方法,即GEAR,以构建具有三个独特且理想特征的关联分类器。首先,GEAR分类器中的规则在直观上更具吸引力;第二,GEAR分类的准确性提高了或至少与其他同类的一样好;第三,GEAR分类器的尺寸明显更紧凑。通过这样做,提供了包括规则冗余和紧凑集在内的许多概念,以及可以作为算法修剪策略并入规则挖掘过程的相关属性。基准数据集的实验结果还表明,GEAR以有效的方式优于GARC和其他方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号