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首页> 外文期刊>Network Modeling Analysis in Health Informatics and Bioinformatics >Classification of microarray cancer data using ensemble approach
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Classification of microarray cancer data using ensemble approach

机译:使用集成方法对微阵列癌症数据进行分类

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摘要

An ensemble of classifiers is created by combining predictions of multiple component classifiers for improving prediction performance. In this paper, we conduct experimental comparison of J48, NB, IBK on nine microarray cancer datasets and also analyze their performance with Bagging, Boosting and Stack Generalization. The experimental results show that all ensemble methods outperform the individual classification methods. We then present a method, referred to as SD-EnClass, for combining classifiers from different classification families into an ensemble, based on a simple estimation of each classifier's class performance. The experimental results show that the proposed model improves classification accuracy, in comparison to simply selecting the best classifier in the combination. In the second stage, we combine the results of our proposed method with the results of Boosting, Bagging and Stacking using the combining method proposed, to obtain results which are significantly better than using Boosting, Bagging or Stacking alone.
机译:通过组合多个组件分类器的预测来创建分类器的整体,以提高预测性能。在本文中,我们对9个微阵列癌症数据集进行了J48,NB,IBK的实验比较,并通过Bagging,Boosting和Stack Generalization分析了它们的性能。实验结果表明,所有集成方法均优于单个分类方法。然后,我们基于每个分类器的类性能的简单估计,提出一种方法,称为SD-EnClass,用于将来自不同分类族的分类器组合为一个整体。实验结果表明,与简单地在组合中选择最佳分类器相比,该模型提高了分类精度。在第二阶段,我们使用提出的合并方法将我们提出的方法的结果与Boosting,Bagging和Stacking的结果进行合并,以获得明显优于单独使用Boosting,Bagging或Stacking的结果。

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