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Using boosting to prune bagging ensembles

机译:使用Boosting修剪袋装乐团

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Boosting is used to determine the order in which classifiers are aggregated in a bagging ensemble. Early stopping in the aggregation of the classifiers in the ordered bagging ensemble allows the identification of subensembles that require less memory for storage, classify faster and can improve the generalization accuracy of the original bagging ensemble. In all the classification problems investigated pruned ensembles with 20% of the original classifiers show statistically significant improvements over bagging. In problems where boosting is superior to bagging, these improvements are not sufficient to reach the accuracy of the corresponding boosting ensembles. However, ensemble pruning preserves the performance of bagging in noisy classification tasks, where boosting often has larger generalization errors. Therefore, pruned bagging should generally be preferred to complete bagging and, if no information about the level of noise is available, it is a robust alternative to AdaBoost.
机译:Boosting用于确定分类器在装袋集合中的聚合顺序。在有序装袋集合中尽早停止分类器的聚合,可以识别需要较少存储空间,更快分类的子组件,并可以提高原始装袋集合的泛化准确性。在所有调查的分类问题中,与20%的原始分类器相比,修剪合奏在统计上比装袋有显着改善。在增强效果优于装袋的问题中,这些改进不足以达到相应增强效果的准确性。但是,整体修剪保留了在嘈杂的分类任务中执行装袋的性能,在这种情况下,提升通常具有较大的泛化误差。因此,通常应首选修剪袋装来完成装袋,如果没有关于噪音水平的信息,它是AdaBoost的可靠替代品。

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