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Feature Bundles and their Effect on the Performance of Tree-based Evolutionary Classification and Feature Selection Algorithms

机译:特征捆绑及其对基于树的进化分类和特征选择算法性能的影响

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In this paper, we prove the existence of feature bundles in some classification problems. These are a set of features that while in their entirety are relevant to the target variable, any strict subset of them is completely independent of the target. Any machine learning algorithm applied to a strict subset of a feature bundle cannot produce a model that performs better than a feature-less model that always predicts the majority class. We demonstrate and discuss the effect of these feature bundles on the performance of tree-based classification learning and feature selection algorithms.
机译:在本文中,我们在一些分类问题中证明了特征捆绑包的存在。这些是一组特征,虽然整体与目标变量相关,但它们的任何严格子集都完全独立于目标。应用于特征包的严格子集的任何机器学习算法都无法生成比始终预测大多数类的特征模型更好地执行更好的模型。我们展示并讨论了这些特征捆绑在基于树的分类学习和特征选择算法的性能的影响。

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