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Updated: Jul 5, 2025

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Bayesian DivideMix++ for Enhanced Learning with Noisy Labels.

Bhalaji Nagarajan1, Ricardo Marques2, Eduardo Aguilar3

  • 1Dept. de Matemàtiques i Informàtica, Universitat de Barcelona, Gran Via de les Corts Catalanes 585, 08007, Barcelona, Spain.

Neural Networks : the Official Journal of the International Neural Network Society
|January 20, 2024
PubMed
Summary
This summary is machine-generated.

This study introduces Bayesian DivideMix++, a novel framework to improve deep neural networks

Keywords:
Data augmentationLabel uncertaintyLearning with noisy labelsMonte-Carlo dropoutsNeural network memorizationSelf-supervised pre-training

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Area of Science:

  • Machine Learning
  • Deep Learning
  • Computer Vision

Background:

  • Inexpensive data annotation methods like crowdsourcing can introduce noisy labels.
  • Noisy labels negatively impact deep neural network performance and generalization.
  • Robust models are essential for handling noisy labels in deep learning.

Purpose of the Study:

  • To address neural network memorization and uncertainty challenges in noisy label learning.
  • To propose a novel framework, Bayesian DivideMix++, to enhance model robustness.

Main Methods:

  • Introduced DivideMix++ for improved robustness against memorization.
  • Implemented Monte-Carlo MixMatch to address label uncertainty.
  • Integrated self-supervised pre-training and tailored data augmentations.
  • Utilized uncertainty measurements to down-weight uncertain samples in MixMatch.

Main Results:

  • Bayesian DivideMix++ demonstrated significant improvements across four diverse datasets.
  • The proposed framework outperformed existing state-of-the-art models.
  • Effectiveness validated through extensive experiments in synthetic and real-world noise settings.

Conclusions:

  • Bayesian DivideMix++ effectively mitigates the detrimental effects of noisy labels.
  • The framework enhances the performance and generalization of deep neural networks.
  • Findings highlight the potential for practical application in real-world scenarios.