Boosting semi‐supervised learning under imbalanced regression via pseudo‐labeling
Nannan Zong,
Songzhi Su,
Changle Zhou
Abstract:SummaryImbalanced samples are widespread, which impairs the generalization and fairness of models. Semi‐supervised learning can overcome the deficiency of rare labeled samples, but it is challenging to select high‐quality pseudo‐label data. Unlike discrete labels that can be matched one‐to‐one with points on a numerical axis, labels in regression tasks are consecutive and cannot be directly chosen. Besides, the distribution of unlabeled data is imbalanced, which easily leads to an imbalanced distribution of ps… Show more
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