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An Ensemble Method Based on AdaBoost and Meta-Learning

机译:基于Adaboost和Meta-Leather的合奏方法

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We propose a new machine learning algorithm: meta-boosting. Using the boosting method a weak learner can be converted into a strong learner by changing the weight distribution of the training examples. It is often regarded as a method for decreasing both the bias and variance although it mainly reduces variance. Meta-learning has the advantage of coalescing the results of multiple learners to improve accuracy, which is a bias reduction method. By combing boosting algorithms with different weak learners using the meta-learning scheme, both of the bias and variance are reduced. Our experiments demonstrate that this meta-boosting algorithm not only displays superior performance than the best results of the base-learners but that it also surpasses other recent algorithms.
机译:我们提出了一种新的机器学习算法:Meta-Boosting。使用升压方法可以通过改变训练示例的重量分布来将弱学员转换为强学习者。通常被认为是一种降低偏差和方差的方法,尽管它主要减少方差。元学习具有合并多个学习者的结果,以提高准确性,这是一种偏差减少方法。通过使用元学习方案对不同弱学习者进行促进算法,减少了偏差和方差。我们的实验表明,这种元升压算法不仅显示出卓越的性能,而不是基本学习者的最佳结果,但它也超越了其他最近的算法。

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