Review of Bagging and Boosting Classification Performance on Unbalanced Binary Classification

Yashasvi Singhal, Ayushi Jain, Shreya Batra, Yash Varshney, Megha Rathi
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引用次数: 15

Abstract

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.
非平衡二元分类的Bagging和Boosting分类性能研究进展
很多时候,当研究问题涉及到二分类时,我们会遇到类标签不平衡的情况;负类往往压倒正类,导致模型无法学习到足够的复杂性来正确分类相对较低的标签。Bagging和boosting分类器近年来因其对不平衡类标签的鲁棒性而受到欢迎,两者都使用集成的概念来推广模型并对未见过的数据进行预测。通过本文,我们旨在探索在不平衡二分类数据集上使用bagging和boosting分类器来提高分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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