VAE-Inf: A statistically interpretable generative paradigm for imbalanced classification

📰 ArXiv cs.AI

arXiv:2604.25334v1 Announce Type: cross Abstract: Imbalanced classification remains a pervasive challenge in machine learning, particularly when minority samples are too scarce to provide a robust discriminative boundary. In such extreme scenarios, conventional models often suffer from unstable decision boundaries and a lack of reliable error control. To bridge the gap between generative modeling and discriminative classification, we propose a two-stage framework \textbf{VAE-Inf} that integrates

Published 29 Apr 2026
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