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Wrapping Boosters against Noise

机译:包装增强器以防噪音

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摘要

Wrappers have recently been used to obtain parameter optimizations for learning algorithms. In this paper we investigate the use of a wrapper for estimating the correct number of boosting ensembles in the presence of class noise. Contrary to the naive approach that would be quadratic in the number of boosting iterations, the incremental algorithm described is linear. Additionally, directly using the k-sized ensembles generated during k-fold cross-validation search for prediction usually results in further improvements in classification performance. This improvement can be attributed to the reduction of variance due to averaging k ensembles instead of using only one ensemble. Consequently, cross-validation in the way we use it here, termed wrapping, can be viewed as yet another ensemble learner similar in spirit to bagging but also somewhat related to stacking.
机译:包装器最近已用于获取学习算法的参数优化。在本文中,我们研究了在存在类噪声的情况下,使用包装器来估计正确的增强合奏数。与天真的方法相反,它在提升迭代次数上是二次的,所描述的增量算法是线性的。此外,直接将在k倍交叉验证搜索过程中生成的k大小的合奏用于预测通常会进一步提高分类性能。这种改进可以归因于平均k个集合而不是仅使用一个集合所导致的方差的减少。因此,我们在这里使用的交叉验证(称为包装)可以看作是另一个整体学习者,其本质与装袋相似,但在某种程度上与堆叠有关。

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