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Simple and Accurate Classification Method Based on Class Association Rules Performs Well on Well-Known Datasets

机译:基于类关联规则的简单和准确的分类方法在众所周知的数据集中执行良好

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Existing classification rule learning algorithms use mainly greedy heuristic search to find regularities in datasets for classification. In recent years, extensive research on association rule mining was performed in the machine learning community on learning rules by using exhaustive search. The main objective is to find all rules in data that satisfy the user-specified minimum support and minimum confidence constraints. Although the whole set of rules may not be used directly for accurate classification, effective and efficient classifiers have been built using these, so called, classification association rules. In this paper, we compare "classical" classification rule learning algorithms that use greedy heuristic search to produce the final classifier with a class association rule learner that uses constrained exhaustive search to find classification rules on "well known" datasets. We propose a simple method to extract class association rules by simple pruning to form an accurate classifier. This is a preliminary study that aims to show that an adequate choice of the "right" class association rules by considering the dependent (class) attribute distribution of values can produce a compact, understandable and relatively accurate classifier. We have performed experiments on 12 datasets from UCI Machine Learning Database Repository and compared the results with well-known rule-based and tree-based classification algorithms. Experimental results show that our method was consistent and comparative with other well-known classification algorithms. Although not achieving the best results in terms of classification accuracy, our method is relatively simple and produces compact and understandable classifiers by exhaustively searching the entire example space.
机译:现有的分类规则学习算法使用的主要是贪婪的启发式搜索找到的数据集进行分类规律。近年来,在机器学习社会上使用穷举搜索学习规则进行关联规则挖掘了广泛的研究。主要目标是找到满足用户指定的最小支持度和最小置信度限制的数据的所有规则。虽然整套的规则,不得直接用于精确分类,有效和高效的分类一直在使用这些内置,所谓的,分类的关联规则。在本文中,我们比较使用贪婪启发式搜索,产生了一类关联规则的学习者最终的分类使用限制穷尽搜索到“众所周知”的数据集的分类规则“经典”分类规则学习算法。我们通过简单的修剪,形成一个准确的分类提出了一个简单的方法来提取类关联规则。这是一个初步的研究,旨在表明,通过考虑值的依赖(类)属性分配的“权利”类关联规则的适当选择可以产生一个紧凑的,可以理解的,相对准确的分类。我们从UCI机器学习数据库存储库进行12个集实验,并与知名的基于树的基于规则的分类算法的结果。实验结果表明,我们的方法是一致的,比较与其他知名的分类算法。虽然在分类精度方面没有达到最好的效果,我们的方法比较简单,通过详尽搜索整个空间,例如紧凑型生产和可以理解的分类。

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