Label Noise-Robust Learning using a Confidence-Based Sieving Strategy
- URL: http://arxiv.org/abs/2210.05330v3
- Date: Wed, 27 Sep 2023 13:01:36 GMT
- Title: Label Noise-Robust Learning using a Confidence-Based Sieving Strategy
- Authors: Reihaneh Torkzadehmahani, Reza Nasirigerdeh, Daniel Rueckert, Georgios
Kaissis
- Abstract summary: In learning tasks with label noise, improving model robustness against overfitting is a pivotal challenge.
Identifying the samples with noisy labels and preventing the model from learning them is a promising approach to address this challenge.
We propose a novel discriminator metric called confidence error and a sieving strategy called CONFES to differentiate between the clean and noisy samples effectively.
- Score: 15.997774467236352
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In learning tasks with label noise, improving model robustness against
overfitting is a pivotal challenge because the model eventually memorizes
labels, including the noisy ones. Identifying the samples with noisy labels and
preventing the model from learning them is a promising approach to address this
challenge. When training with noisy labels, the per-class confidence scores of
the model, represented by the class probabilities, can be reliable criteria for
assessing whether the input label is the true label or the corrupted one. In
this work, we exploit this observation and propose a novel discriminator metric
called confidence error and a sieving strategy called CONFES to differentiate
between the clean and noisy samples effectively. We provide theoretical
guarantees on the probability of error for our proposed metric. Then, we
experimentally illustrate the superior performance of our proposed approach
compared to recent studies on various settings, such as synthetic and
real-world label noise. Moreover, we show CONFES can be combined with other
state-of-the-art approaches, such as Co-teaching and DivideMix to further
improve model performance.
Related papers
- Extracting Clean and Balanced Subset for Noisy Long-tailed Classification [66.47809135771698]
We develop a novel pseudo labeling method using class prototypes from the perspective of distribution matching.
By setting a manually-specific probability measure, we can reduce the side-effects of noisy and long-tailed data simultaneously.
Our method can extract this class-balanced subset with clean labels, which brings effective performance gains for long-tailed classification with label noise.
arXiv Detail & Related papers (2024-04-10T07:34:37Z) - Learning with Imbalanced Noisy Data by Preventing Bias in Sample
Selection [82.43311784594384]
Real-world datasets contain not only noisy labels but also class imbalance.
We propose a simple yet effective method to address noisy labels in imbalanced datasets.
arXiv Detail & Related papers (2024-02-17T10:34:53Z) - Combating Label Noise With A General Surrogate Model For Sample
Selection [84.61367781175984]
We propose to leverage the vision-language surrogate model CLIP to filter noisy samples automatically.
We validate the effectiveness of our proposed method on both real-world and synthetic noisy datasets.
arXiv Detail & Related papers (2023-10-16T14:43:27Z) - Uncertainty-Aware Learning Against Label Noise on Imbalanced Datasets [23.4536532321199]
We propose an Uncertainty-aware Label Correction framework to handle label noise on imbalanced datasets.
Inspired by our observations, we propose an Uncertainty-aware Label Correction framework to handle label noise on imbalanced datasets.
arXiv Detail & Related papers (2022-07-12T11:35:55Z) - S3: Supervised Self-supervised Learning under Label Noise [53.02249460567745]
In this paper we address the problem of classification in the presence of label noise.
In the heart of our method is a sample selection mechanism that relies on the consistency between the annotated label of a sample and the distribution of the labels in its neighborhood in the feature space.
Our method significantly surpasses previous methods on both CIFARCIFAR100 with artificial noise and real-world noisy datasets such as WebVision and ANIMAL-10N.
arXiv Detail & Related papers (2021-11-22T15:49:20Z) - Label Noise in Adversarial Training: A Novel Perspective to Study Robust
Overfitting [45.58217741522973]
We show that label noise exists in adversarial training.
Such label noise is due to the mismatch between the true label distribution of adversarial examples and the label inherited from clean examples.
We propose a method to automatically calibrate the label to address the label noise and robust overfitting.
arXiv Detail & Related papers (2021-10-07T01:15:06Z) - Confidence Adaptive Regularization for Deep Learning with Noisy Labels [2.0349696181833337]
Recent studies on the memorization effects of deep neural networks on noisy labels show that the networks first fit the correctly-labeled training samples before memorizing the mislabeled samples.
Motivated by this early-learning phenomenon, we propose a novel method to prevent memorization of the mislabeled samples.
We provide the theoretical analysis and conduct the experiments on synthetic and real-world datasets, demonstrating that our approach achieves comparable results to the state-of-the-art methods.
arXiv Detail & Related papers (2021-08-18T15:51:25Z) - Open-set Label Noise Can Improve Robustness Against Inherent Label Noise [27.885927200376386]
We show that open-set noisy labels can be non-toxic and even benefit the robustness against inherent noisy labels.
We propose a simple yet effective regularization by introducing Open-set samples with Dynamic Noisy Labels (ODNL) into training.
arXiv Detail & Related papers (2021-06-21T07:15:50Z) - Tackling Instance-Dependent Label Noise via a Universal Probabilistic
Model [80.91927573604438]
This paper proposes a simple yet universal probabilistic model, which explicitly relates noisy labels to their instances.
Experiments on datasets with both synthetic and real-world label noise verify that the proposed method yields significant improvements on robustness.
arXiv Detail & Related papers (2021-01-14T05:43:51Z) - Multi-Objective Interpolation Training for Robustness to Label Noise [17.264550056296915]
We show that standard supervised contrastive learning degrades in the presence of label noise.
We propose a novel label noise detection method that exploits the robust feature representations learned via contrastive learning.
Experiments on synthetic and real-world noise benchmarks demonstrate that MOIT/MOIT+ achieves state-of-the-art results.
arXiv Detail & Related papers (2020-12-08T15:01:54Z) - Robustness of Accuracy Metric and its Inspirations in Learning with
Noisy Labels [51.66448070984615]
We show that maximizing training accuracy on sufficiently many noisy samples yields an approximately optimal classifier.
For validation, we prove that a noisy validation set is reliable, addressing the critical demand of model selection.
We show characterizations of models trained with noisy labels, motivated by our theoretical results, and verify the utility of a noisy validation set.
arXiv Detail & Related papers (2020-12-08T03:37:47Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.