鲁棒学习的动态损失

IF 20.8 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Pattern Analysis and Machine Intelligence Pub Date : 2022-11-22 DOI:10.48550/arXiv.2211.12506
Shenwang Jiang, Jianan Li, Jizhou Zhang, Ying Wang, Tingfa Xu
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引用次数: 0

摘要

标签噪声和类不平衡是在现实世界数据集中遇到的常见挑战。现有的鲁棒学习方法通常侧重于单独解决标签噪声或类不平衡,当这两种偏差都存在时,会导致性能不佳。为了弥补这一差距,本工作引入了一种新的基于元学习的动态损失方法,该方法在训练过程中调整目标函数,从而有效地从长尾噪声数据中学习分类器。具体来说,我们的动态损失由两个部分组成:一个标签校正器和一个边际生成器。标签校正器负责校正有噪声的标签,而边界生成器通过捕获底层数据分布和分类器的学习状态来生成每个类的分类边界。此外,我们采用分层抽样策略,通过多样化和具有挑战性的样本丰富少量无偏元数据。这可以通过元学习对动态损失中的两个分量进行联合优化,使分类器能够有效地适应干净平衡的测试数据。在包括CIFAR-10/100、Animal-10N、ImageNet-LT和Webvision在内的多个具有不同类型数据偏差的真实世界和合成数据集上进行的大量实验表明,我们的方法达到了最先进的精度。我们的方法的代码将很快公开。
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Dynamic Loss For Robust Learning
Label noise and class imbalance are common challenges encountered in real-world datasets. Existing approaches for robust learning often focus on addressing either label noise or class imbalance individually, resulting in suboptimal performance when both biases are present. To bridge this gap, this work introduces a novel meta-learning-based dynamic loss that adapts the objective functions during the training process to effectively learn a classifier from long-tailed noisy data. Specifically, our dynamic loss consists of two components: a label corrector and a margin generator. The label corrector is responsible for correcting noisy labels, while the margin generator generates per-class classification margins by capturing the underlying data distribution and the learning state of the classifier. In addition, we employ a hierarchical sampling strategy that enriches a small amount of unbiased metadata with diverse and challenging samples. This enables the joint optimization of the two components in the dynamic loss through meta-learning, allowing the classifier to effectively adapt to clean and balanced test data. Extensive experiments conducted on multiple real-world and synthetic datasets with various types of data biases, including CIFAR-10/100, Animal-10N, ImageNet-LT, and Webvision, demonstrate that our method achieves state-of-the-art accuracy. The code for our approach will soon be made publicly available.
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来源期刊
CiteScore
28.40
自引率
3.00%
发文量
885
审稿时长
8.5 months
期刊介绍: The IEEE Transactions on Pattern Analysis and Machine Intelligence publishes articles on all traditional areas of computer vision and image understanding, all traditional areas of pattern analysis and recognition, and selected areas of machine intelligence, with a particular emphasis on machine learning for pattern analysis. Areas such as techniques for visual search, document and handwriting analysis, medical image analysis, video and image sequence analysis, content-based retrieval of image and video, face and gesture recognition and relevant specialized hardware and/or software architectures are also covered.
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