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Imbalanced Clasificación under Capacity Constraints

  • Talk

  • Daniel Fraiman
  • Departamento de Matemática y Ciencias, Universidad de San Andrés & CONICET, Argentina.
  • 25 maig de 2026 a les 12:00
  • seminar room, zoom
  • Sync with iCal
  • Announcement file
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In many classification settings, the class of primary interest is rare, leading to imbalanced data problems that arise in applications such as rare disease detection and fraud identification. In these contexts, identifying a potential positive instance typically triggers costly follow-up actions, such as medical imaging or detailed transaction inspection, which are subject to limited operational capacity. Motivated by this setting, we consider classification problems where decisions must be made under constraints on the number of instances that can be selected for further analysis. We propose a classification framework that explicitly controls the rate of positive predictions, enforcing a user-defined bound on the proportion of observations classified as belonging to the minority class while maximizing detection performance. The approach can be implemented using standard learning methods and naturally extends to online settings, where decisions are taken in real time. We show that incorporating capacity constraints leads to substantial improvements over classical approaches, including resampling techniques such as SMOTE, which do not directly control the selection rate.


This Talk will be broadcasted in the following zoom link: https://us06web.zoom.us/j/89027654460?pwd=Wg9TYMPqqP2ipfj2JVvEagmzaTw29c.1



Detalls de contacte:

Jose Javier Ramasco

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