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A new ensemble classifier for multivariate medical data

机译:用于多元医学数据的新型整体分类器

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Selecting an efficient classifier for medical data is considered as one of the most important part of today's computer aided diagnosis. The performance of single classifiers such as decision tree classifier can be increased by ensemble method. However, this approach relies on the data quality and missing values. In this paper, we propose a new ensemble classifier to overcome overfitting and biasness issues of traditional classifiers as applied to multivariate medical data with missing values. Medical professionals do not believe in filling the missing values by any of the existing statistical methods because each case is different in medical science. The proposed ensemble model was compared with the bagged tree classifier using Ggraph. The results of this study indicate that, the proposed ensemble classifier is able to achieve better accuracy of more than 96 percent without filling up missing values; and it does not suffer from over-fitting and biasness issues.
机译:为医学数据选择有效的分类器被认为是当今计算机辅助诊断中最重要的部分之一。可以通过集成方法来提高诸如决策树分类器之类的单个分类器的性能。但是,这种方法依赖于数据质量和缺失值。在本文中,我们提出了一种新的集成分类器,以克服传统分类器应用于具有缺失值的多元医学数据的过度拟合和偏倚问题。医学专业人员不相信通过任何现有的统计方法来填充缺失值,因为每种情况在医学科学上都是不同的。使用Ggraph将提出的集成模型与袋装树分类器进行了比较。这项研究的结果表明,所提出的集成分类器能够在不填充缺失值的情况下达到96%以上的更好准确性。而且它不会遭受过度拟合和偏差问题的困扰。

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