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Compensation of feature selection biases accompanied with improved predictive performance for binary classification by using a novel ensemble feature selection approach

机译:通过使用新颖的集成特征选择方法补偿特征选择偏差并改善二进制分类的预测性能

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摘要

MotivationBiomarker discovery methods are essential to identify a minimal subset of features (e.g., serum markers in predictive medicine) that are relevant to develop prediction models with high accuracy. By now, there exist diverse feature selection methods, which either are embedded, combined, or independent of predictive learning algorithms. Many preceding studies showed the defectiveness of single feature selection results, which cause difficulties for professionals in a variety of fields (e.g., medical practitioners) to analyze and interpret the obtained feature subsets. Whereas each of these methods is highly biased, an ensemble feature selection has the advantage to alleviate and compensate for such biases. Concerning the reliability, validity, and reproducibility of these methods, we examined eight different feature selection methods for binary classification datasets and developed an ensemble feature selection system.
机译:动机生物标记物发现方法对于识别与开发高精度预测模型相关的特征的最小子集(例如,预测医学中的血清标志物)至关重要。到目前为止,存在多种特征选择方法,这些方法可以嵌入,组合或独立于预测学习算法。先前的许多研究表明单一特征选择结果的缺陷,这给各个领域的专业人员(例如,医学从业者)造成了难以分析和解释获得的特征子集的困难。尽管这些方法中的每一种都是高度偏向的,但是整体特征选择具有减轻和补偿这种偏向的优点。关于这些方法的可靠性,有效性和可重复性,我们针对二进制分类数据集检查了八种不同的特征选择方法,并开发了集成特征选择系统。

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