Hierarchical Noise-Tolerant Meta-Learning With Noisy Labels

IF 3.2 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Signal Processing Letters Pub Date : 2024-10-14 DOI:10.1109/LSP.2024.3480033
Yahui Liu;Jian Wang;Yuntai Yang;Renlong Wang;Simiao Wang
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Abstract

Due to the detrimental impact of noisy labels on the generalization of deep neural networks, learning with noisy labels has become an important task in modern deep learning applications. Many previous efforts have mitigated this problem by either removing noisy samples or correcting labels. In this letter, we address this issue from a new perspective and empirically find that models trained with both clean and mislabeled samples exhibit distinguishable activation feature distributions. Building on this observation, we propose a novel meta-learning approach called the Hierarchical Noise-tolerant Meta-Learning (HNML) method, which involves a bi-level optimization comprising meta-training and meta-testing. In the meta-training stage, we incorporate consistency loss at the output prediction hierarchy to facilitate model adaptation to dynamically changing label noise. In the meta-testing stage, we extract activation feature distributions using class activation maps and propose a new mask-guided self-learning method to correct biases in the foreground regions. Through the bi-level optimization of HNML, we ensure that the model generates discriminative feature representations that are insensitive to noisy labels. When evaluated on both synthetic and real-world noisy datasets, our HNML method achieves significant improvements over previous state-of-the-art methods.
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带噪声标签的分层容噪元学习
由于噪声标签对深度神经网络泛化的不利影响,使用噪声标签进行学习已成为现代深度学习应用中的一项重要任务。之前的许多研究都通过移除噪声样本或校正标签来缓解这一问题。在这封信中,我们从一个新的角度来解决这个问题,并根据经验发现,用干净样本和错误标签样本训练出来的模型都表现出可区分的激活特征分布。基于这一观察结果,我们提出了一种新颖的元学习方法,即分层噪声容限元学习(HNML)方法,该方法涉及由元训练和元测试组成的两级优化。在元训练阶段,我们将一致性损失纳入输出预测层次,以促进模型适应动态变化的标签噪声。在元测试阶段,我们使用类激活图提取激活特征分布,并提出一种新的掩码引导自学习方法来纠正前景区域的偏差。通过对 HNML 进行双层优化,我们确保模型生成的特征表征对噪声标签不敏感。在合成数据集和真实世界的噪声数据集上进行评估时,我们的 HNML 方法比以前最先进的方法取得了显著的改进。
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来源期刊
IEEE Signal Processing Letters
IEEE Signal Processing Letters 工程技术-工程:电子与电气
CiteScore
7.40
自引率
12.80%
发文量
339
审稿时长
2.8 months
期刊介绍: The IEEE Signal Processing Letters is a monthly, archival publication designed to provide rapid dissemination of original, cutting-edge ideas and timely, significant contributions in signal, image, speech, language and audio processing. Papers published in the Letters can be presented within one year of their appearance in signal processing conferences such as ICASSP, GlobalSIP and ICIP, and also in several workshop organized by the Signal Processing Society.
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