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Wisdom of Crowds: An Empirical Study of Ensemble-Based Feature Selection Strategies

机译:人群的智慧:基于集成的特征选择策略的实证研究

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The accuracy of feature selection methods is affected by both the nature of the underlying datasets and the actual machine learning algorithms they are combined with. The role these factors have in the final accuracy of the classifiers is generally unknown in advance. This paper presents an ensemble-based feature selection approach that addresses this uncertainty and mitigates against the variability in the generalisation of the classifiers. The study conducts extensive experiments with combinations of three feature selection methods on nine datasets, which are trained on eight different types of machine learning algorithms. The results confirm that the ensemble based approaches to feature selection tend to produce classifiers with higher accuracies, are more reliable due to decreased variances and are thus more generalisable.
机译:特征选择方法的准确性受基础数据集的性质以及与它们组合的实际机器学习算法的影响。这些因素在分类器的最终准确性中所起的作用通常是事先未知的。本文提出了一种基于整体的特征选择方法,该方法解决了这种不确定性并减轻了分类器泛化的可变性。这项研究在9个数据集上结合了三种特征选择方法进行了广泛的实验,这些数据集在8种不同类型的机器学习算法上进行了训练。结果证实,基于整体的特征选择方法趋于产生具有更高准确度的分类器,由于减少的方差而更加可靠,因此更具通用性。

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