Learning to Bootstrap for Combating Label Noise

02/09/2022
by   Yuyin Zhou, et al.
14

Deep neural networks are powerful tools for representation learning, but can easily overfit to noisy labels which are prevalent in many real-world scenarios. Generally, noisy supervision could stem from variation among labelers, label corruption by adversaries, etc. To combat such label noises, one popular line of approach is to apply customized weights to the training instances, so that the corrupted examples contribute less to the model learning. However, such learning mechanisms potentially erase important information about the data distribution and therefore yield suboptimal results. To leverage useful information from the corrupted instances, an alternative is the bootstrapping loss, which reconstructs new training targets on-the-fly by incorporating the network's own predictions (i.e., pseudo-labels). In this paper, we propose a more generic learnable loss objective which enables a joint reweighting of instances and labels at once. Specifically, our method dynamically adjusts the per-sample importance weight between the real observed labels and pseudo-labels, where the weights are efficiently determined in a meta process. Compared to the previous instance reweighting methods, our approach concurrently conducts implicit relabeling, and thereby yield substantial improvements with almost no extra cost. Extensive experimental results demonstrated the strengths of our approach over existing methods on multiple natural and medical image benchmark datasets, including CIFAR-10, CIFAR-100, ISIC2019 and Clothing 1M. The code is publicly available at https://github.com/yuyinzhou/L2B.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/13/2023

Twin Contrastive Learning with Noisy Labels

Learning from noisy data is a challenging task that significantly degene...
research
07/21/2021

Superpixel-guided Iterative Learning from Noisy Labels for Medical Image Segmentation

Learning segmentation from noisy labels is an important task for medical...
research
10/10/2022

Is your noise correction noisy? PLS: Robustness to label noise with two stage detection

Designing robust algorithms capable of training accurate neural networks...
research
03/05/2020

Combating noisy labels by agreement: A joint training method with co-regularization

Deep Learning with noisy labels is a practically challenging problem in ...
research
07/21/2023

Consistency-guided Meta-Learning for Bootstrapping Semi-Supervised Medical Image Segmentation

Medical imaging has witnessed remarkable progress but usually requires a...
research
07/15/2021

Temporal-aware Language Representation Learning From Crowdsourced Labels

Learning effective language representations from crowdsourced labels is ...
research
03/28/2021

Friends and Foes in Learning from Noisy Labels

Learning from examples with noisy labels has attracted increasing attent...

Please sign up or login with your details

Forgot password? Click here to reset