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首页> 外文期刊>International Journal of Uncertainty, Fuzziness, and Knowledge-based Systems >A New Efficient Algorithm Based on Multi-Classifiers Model for Classification
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A New Efficient Algorithm Based on Multi-Classifiers Model for Classification

机译:基于多分类器模型的高效分类新算法

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摘要

Classification is one of the most important problems in data mining and machine learning. The quality and quantity of classification rules are two factors to influence the accuracy of classification. In this paper, we propose a new algorithm to enhance the final classification accuracy, called CMCM (Classification based on Multiple Classifier Models), which consists of two classification models. Model1 centers on the improvement of quality. The optimal attribute values are obtained as the first item of a classification rule from both the items and their complements. While in Model2, quantity is taken into consideration, so it constructs two candidate sets and uses the one-versus-many strategy to generate several rules at one time. The experiment results demonstrate that CMCM can achieve higher classification accuracy than the proposed classification approaches. CMCM can extract sufficient high-quality rules for imbalanced data. Meanwhile, it can also obtain sufficient latent information for classification.
机译:分类是数据挖掘和机器学习中最重要的问题之一。分类规则的质量和数量是影响分类准确性的两个因素。在本文中,我们提出了一种提高最终分类准确性的新算法,称为CMCM(基于多个分类器模型的分类),该算法由两个分类模型组成。 Model1专注于质量的提高。从项目及其补充中获得最佳属性值作为分类规则的第一项。在Model2中,考虑了数量,因此它构造了两个候选集并使用“一对多”策略一次生成多个规则。实验结果表明,CMCM可以实现比提出的分类方法更高的分类精度。 CMCM可以为不平衡数据提取足够的高质量规则。同时,它也可以获得足够的潜在信息用于分类。

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