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MLeNN: A First Approach to Heuristic Multilabel Undersampling

机译:MLeNN:启发式多标签欠采样的第一种方法

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摘要

Learning from unbalanced multilabel data is a challenging task that has attracted considerable attention lately. Some resampling algorithms used in traditional classification, such as random undersampling and random oversampling, have been already adapted in order to work with multilabel datasets. In this paper MLeNN (MultiLabel edited Nearest Neighbor), a heuristic multilabel undersampling algorithm based on the well-known Wilson's Edited Nearest Neighbor Rule, is proposed. The samples to be removed are heuristically selected, instead of randomly picked. The ability of MLeNN to improve classification results is experimentally tested, and its performance against multilabel random undersampling is analyzed. As will be shown, MLeNN is a competitive multilabel undersampling alternative, able to enhance significantly classification results.
机译:从不平衡的多标签数据中学习是一项具有挑战性的任务,最近引起了相当大的关注。传统分类中使用的一些重采样算法(例如随机欠采样和随机过采样)已经进行了调整,以便与多标签数据集配合使用。在本文中,MLeNN(MultiLabel编辑的最近邻居)提出了一种基于著名的Wilson的Edited Nearest Neighbor Rule的启发式多标签欠采样算法。启发式选择要删除的样本,而不是随机选择。实验测试了MLeNN改善分类结果的能力,并分析了其对多标签随机欠采样的性能。如将显示的那样,MLeNN是竞争性的多标签欠采样替代方案,能够显着增强分类结果。

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