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Review of Bagging and Boosting Classification Performance on Unbalanced Binary Classification

机译:不平衡二元分类的套袋和提升分类性能综述

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Quite a few times when the problem of study involves binary classification we are dealt with a situation of unbalanced class labels; the negative class often dominates the positive class leading to the problem that the model was not able to learn enough complexities to correctly classify the label which are lower in comparison. The Bagging and boosting classifiers in recent times have gained in popularity due to its robustness against the unbalanced class labels, both uses the notion of ensemble to generalize the model and predict on the unseen data. Through this paper we aim to explore the improvement in the classification performance by bagging and boosting classifiers on an unbalanced binary classification dataset.
机译:当研究问题涉及二元分类时,有好几次我们都遇到了类别标签不平衡的情况。否定类通常会主导肯定类,从而导致该模型无法学习足够的复杂性来正确地对标签进行分类,而相比之下,标签的分类则更低。近来,Bagging和Boosting分类器由于其对不平衡类标签的鲁棒性而广受欢迎,它们都使用集合概念来对模型进行泛化并对看不见的数据进行预测。通过本文,我们旨在探索通过对不平衡的二进制分类数据集进行装袋和增强分类器来提高分类性能。

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