首页> 外文会议>International Symposium on Biological and Medical Data Analysis(ISBMDA 2004); 20041118-19; Barcelona(ES) >Selective Classifiers Can Be Too Restrictive: A Case-Study in Oesophageal Cancer
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Selective Classifiers Can Be Too Restrictive: A Case-Study in Oesophageal Cancer

机译:选择性分类器可能过于严格:食管癌病例研究

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Real-life datasets in biomedicine often include missing values. When learning a Bayesian network classifier from such a dataset, the missing values axe typically filled in by means of an imputation method to arrive at a complete dataset. The thus completed dataset then is used for the classifier's construction. When learning a selective classifier, also the selection of appropriate features is based upon the completed data. The resulting classifier, however, is likely to be used in the original real-life setting where it is again confronted with missing values. By means of a real-life dataset in the field of oesophageal cancer that includes a relatively large number of missing values, we argue that especially the wrapper approach to feature selection may result in classifiers that are too selective for such a setting and that, in fact, some redundancy is required to arrive at a reasonable classification accuracy in practice.
机译:生物医学中的现实生活数据集通常包含缺失值。当从这样的数据集学习贝叶斯网络分类器时,通常通过插补方法来填充缺失值ax以获得完整的数据集。这样完成的数据集然后用于分类器的构造。当学习选择性分类器时,适当特征的选择也基于完成的数据。但是,生成的分类器很可能会在原始现实环境中使用,在那里再次面临缺失值。通过食管癌领域中包含相对大量缺失值的真实数据集,我们认为,特别是针对特征选择的包装方法可能会导致分类器对于这种设置的选择性过高,并且实际上,在实践中需要一些冗余才能达到合理的分类精度。

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