Evaluating the Prediction Bias Induced by Label Imbalance in Multi-label Classification

Luca Piras, Ludovico Boratto, Guilherme Ramos
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引用次数: 1

Abstract

Prediction bias is a well-known problem in classification algorithms, which tend to be skewed towards more represented classes. This phenomenon is even more remarkable in multi-label scenarios, where the number of underrepresented classes is usually larger. In light of this, we hereby present the Prediction Bias Coefficient (PBC), a novel measure that aims to assess the bias induced by label imbalance in multi-label classification. The approach leverages Spearman's rank correlation coefficient between the label frequencies and the F-scores obtained for each label individually. After describing the theoretical properties of the proposed indicator, we illustrate its behaviour on a classification task performed with state-of-the-art methods on two real-world datasets, and we compare it experimentally with other metrics described in the literature.
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多标签分类中标签不平衡引起的预测偏差评估
预测偏差是分类算法中一个众所周知的问题,它倾向于倾向于更有代表性的类。这种现象在多标签场景中更为显著,在这种场景中,未被充分代表的类的数量通常更大。鉴于此,我们提出了预测偏差系数(PBC),这是一个新的度量,旨在评估多标签分类中标签不平衡引起的偏差。该方法利用了标签频率与每个标签单独获得的f分数之间的Spearman等级相关系数。在描述了所提出的指标的理论特性之后,我们说明了它在两个现实世界数据集上使用最先进的方法执行的分类任务中的行为,并将其与文献中描述的其他指标进行了实验比较。
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