Data Science Group @ BCAM | Estimation of the Label-Noise Transition Matrix with Performance Guarantees via Selective Classification
Date: Thu, Jun 25 2026
Hour: 12:00 - 13:00
Location: Maryam Mirzakhani Seminar Room at BCAM
Speakers: Xabier de Juan (BCAM)
Abstract
Modern machine learning depends heavily on massive datasets, but obtaining high-quality annotations at scale is often expensive. As a result, learning from noisily-labeled data has become common, making accurate estimation of the label-noise transition matrix crucial. However, existing transition matrix estimators rely on the fragile estimation of class-posteriors and do not provide finite-sample performance guarantees. In this work, we propose a novel methodology to estimate the transition matrix based on one-sided selective classification. This approach bypasses class-posterior estimation, provides finite-sample performance guarantees, and leverages flexible learning methods for binary classification. Moreover, we introduce effective algorithms to implement the proposed methodology in practice.
Confirmed speakers:
Related events