Learning Discriminative Dynamics with Label Corruption for Noisy Label Detection
- URL: http://arxiv.org/abs/2405.19902v1
- Date: Thu, 30 May 2024 10:06:06 GMT
- Title: Learning Discriminative Dynamics with Label Corruption for Noisy Label Detection
- Authors: Suyeon Kim, Dongha Lee, SeongKu Kang, Sukang Chae, Sanghwan Jang, Hwanjo Yu,
- Abstract summary: We propose DynaCor framework that distinguishes incorrectly labeled instances from correctly labeled ones based on the dynamics of the training signals.
Our comprehensive experiments show that DynaCor outperforms the state-of-the-art competitors and shows strong robustness to various noise types and noise rates.
- Score: 25.55455239006278
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Label noise, commonly found in real-world datasets, has a detrimental impact on a model's generalization. To effectively detect incorrectly labeled instances, previous works have mostly relied on distinguishable training signals, such as training loss, as indicators to differentiate between clean and noisy labels. However, they have limitations in that the training signals incompletely reveal the model's behavior and are not effectively generalized to various noise types, resulting in limited detection accuracy. In this paper, we propose DynaCor framework that distinguishes incorrectly labeled instances from correctly labeled ones based on the dynamics of the training signals. To cope with the absence of supervision for clean and noisy labels, DynaCor first introduces a label corruption strategy that augments the original dataset with intentionally corrupted labels, enabling indirect simulation of the model's behavior on noisy labels. Then, DynaCor learns to identify clean and noisy instances by inducing two clearly distinguishable clusters from the latent representations of training dynamics. Our comprehensive experiments show that DynaCor outperforms the state-of-the-art competitors and shows strong robustness to various noise types and noise rates.
Related papers
- Soft Curriculum for Learning Conditional GANs with Noisy-Labeled and
Uncurated Unlabeled Data [70.25049762295193]
We introduce a novel conditional image generation framework that accepts noisy-labeled and uncurated data during training.
We propose soft curriculum learning, which assigns instance-wise weights for adversarial training while assigning new labels for unlabeled data.
Our experiments show that our approach outperforms existing semi-supervised and label-noise robust methods in terms of both quantitative and qualitative performance.
arXiv Detail & Related papers (2023-07-17T08:31:59Z) - Label Noise-Robust Learning using a Confidence-Based Sieving Strategy [15.997774467236352]
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.
arXiv Detail & Related papers (2022-10-11T10:47:28Z) - Learning from Noisy Labels with Coarse-to-Fine Sample Credibility
Modeling [22.62790706276081]
Training deep neural network (DNN) with noisy labels is practically challenging.
Previous efforts tend to handle part or full data in a unified denoising flow.
We propose a coarse-to-fine robust learning method called CREMA to handle noisy data in a divide-and-conquer manner.
arXiv Detail & Related papers (2022-08-23T02:06:38Z) - Towards Harnessing Feature Embedding for Robust Learning with Noisy
Labels [44.133307197696446]
The memorization effect of deep neural networks (DNNs) plays a pivotal role in recent label noise learning methods.
We propose a novel feature embedding-based method for deep learning with label noise, termed LabEl NoiseDilution (LEND)
arXiv Detail & Related papers (2022-06-27T02:45:09Z) - 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) - Learning to Aggregate and Refine Noisy Labels for Visual Sentiment
Analysis [69.48582264712854]
We propose a robust learning method to perform robust visual sentiment analysis.
Our method relies on an external memory to aggregate and filter noisy labels during training.
We establish a benchmark for visual sentiment analysis with label noise using publicly available datasets.
arXiv Detail & Related papers (2021-09-15T18:18:28Z) - 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) - Learning Not to Learn in the Presence of Noisy Labels [104.7655376309784]
We show that a new class of loss functions called the gambler's loss provides strong robustness to label noise across various levels of corruption.
We show that training with this loss function encourages the model to "abstain" from learning on the data points with noisy labels.
arXiv Detail & Related papers (2020-02-16T09:12:27Z)
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.