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Main Authors: Yu, Yanxuan, Hughes, Michael S., Lee, Julien, Zhou, Jiacheng, Laine, Andrew F.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.17629
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author Yu, Yanxuan
Hughes, Michael S.
Lee, Julien
Zhou, Jiacheng
Laine, Andrew F.
author_facet Yu, Yanxuan
Hughes, Michael S.
Lee, Julien
Zhou, Jiacheng
Laine, Andrew F.
contents We study classification under extreme class imbalance where recall and calibration are both critical, for example in medical diagnosis scenarios. We propose AF-SMOTE, a mathematically motivated augmentation framework that first synthesizes minority points and then filters them by an adversarial discriminator and a boundary utility model. We prove that, under mild assumptions on the decision boundary smoothness and class-conditional densities, our filtering step monotonically improves a surrogate of F_beta (for beta >= 1) while not inflating Brier score. On MIMIC-IV proxy label prediction and canonical fraud detection benchmarks, AF-SMOTE attains higher recall and average precision than strong oversampling baselines (SMOTE, ADASYN, Borderline-SMOTE, SVM-SMOTE), and yields the best calibration. We further validate these gains across multiple additional datasets beyond MIMIC-IV. Our successful application of AF-SMOTE to a healthcare dataset using a proxy label demonstrates in a disease-agnostic way its practical value in clinical situations, where missing true positive cases in rare diseases can have severe consequences.
format Preprint
id arxiv_https___arxiv_org_abs_2511_17629
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Boundary-Aware Adversarial Filtering for Reliable Diagnosis under Extreme Class Imbalance
Yu, Yanxuan
Hughes, Michael S.
Lee, Julien
Zhou, Jiacheng
Laine, Andrew F.
Machine Learning
We study classification under extreme class imbalance where recall and calibration are both critical, for example in medical diagnosis scenarios. We propose AF-SMOTE, a mathematically motivated augmentation framework that first synthesizes minority points and then filters them by an adversarial discriminator and a boundary utility model. We prove that, under mild assumptions on the decision boundary smoothness and class-conditional densities, our filtering step monotonically improves a surrogate of F_beta (for beta >= 1) while not inflating Brier score. On MIMIC-IV proxy label prediction and canonical fraud detection benchmarks, AF-SMOTE attains higher recall and average precision than strong oversampling baselines (SMOTE, ADASYN, Borderline-SMOTE, SVM-SMOTE), and yields the best calibration. We further validate these gains across multiple additional datasets beyond MIMIC-IV. Our successful application of AF-SMOTE to a healthcare dataset using a proxy label demonstrates in a disease-agnostic way its practical value in clinical situations, where missing true positive cases in rare diseases can have severe consequences.
title Boundary-Aware Adversarial Filtering for Reliable Diagnosis under Extreme Class Imbalance
topic Machine Learning
url https://arxiv.org/abs/2511.17629