778

One-Step Abductive Multi-Target Learning with Diverse Noisy Samples

Expert systems with applications (ESWA), 2021
Main:70 Pages
10 Figures
38 Tables
Abstract

One-step abductive multi-target learning (OSAMTL) was proposed to handle complex noisy labels. In this paper, giving definition of diverse noisy samples (DNS), we propose one-step abductive multi-target learning with DNS (OSAMTL-DNS) to expand the original OSAMTL to a wider range of tasks that handle complex noisy labels.

View on arXiv
Comments on this paper