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Increasing the effectiveness of associative classification in terms of class imbalance by using a novel pruning algorithm

机译:通过使用新颖的修剪算法,在类不平衡方面提高关联分类的有效性

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Having received considerable interest in recent years, associative classification has focused on developing a class classifier, with lesser attention paid to the probability classifier used in direct marketing. While contributing to this integrated framework, this work attempts to increase the prediction accuracy of associative classification on class imbalance by adapting the scoring based on associations (SBA) algorithm. The SBA algorithm is modified by coupling it with the pruning strategy of association rules in the probabilistic classification based on associations (PCBA) algorithm, which is adjusted from the CBA for use in the structure of the probability classifier. PCBA is adjusted from CBA by increasing the confidence through under-sampling, setting different minimum supports [minsups) and minimum confidences (minconfs) for rules of different classes based on each distribution, and removing the pruning rules of the lowest error rate. Experimental results based on benchmark datasets and real-life application datasets indicate that the proposed method performs better than C5.0 and the original SBA do, and the number of rules required for scoring is significantly reduced.
机译:近年来,关联分类已引起人们的广泛关注,其重点是开发分类器,而较少关注直接营销中使用的概率分类器。在为该集成框架做出贡献的同时,这项工作试图通过调整基于关联的评分(SBA)算法来提高针对类不平衡的关联分类的预测准确性。通过将SBA算法与基于概率的概率分类法(PCBA)算法中的关联规则修剪策略相结合,对SBA算法进行了修改,该算法可从CBA进行调整以用于概率分类器的结构中。从CBA调整PCBA,方法是通过欠采样增加置信度,根据每个分布为不同类别的规则设置不同的最小支持[minsups]和最小置信度(minconfs),并删除错误率最低的修剪规则。基于基准数据集和实际应用数据集的实验结果表明,该方法的性能优于C5.0和原始SBA,并且显着减少了评分所需的规则数量。

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