A Noisy Sample Selection Framework Based on a Mixup Loss and Recalibration Strategy

Author:

Zhang Qian1ORCID,Yu De1ORCID,Zhou Xinru1ORCID,Gong Hanmeng1,Li Zheng1,Liu Yiming1,Shao Ruirui1

Affiliation:

1. School of Information Technology, Jiangsu Open University, Nanjing 210036, China

Abstract

Deep neural networks (DNNs) have achieved breakthrough progress in various fields, largely owing to the support of large-scale datasets with manually annotated labels. However, obtaining such datasets is costly and time-consuming, making high-quality annotation a challenging task. In this work, we propose an improved noisy sample selection method, termed “sample selection framework”, based on a mixup loss and recalibration strategy (SMR). This framework enhances the robustness and generalization abilities of models. First, we introduce a robust mixup loss function to pre-train two models with identical structures separately. This approach avoids additional hyperparameter adjustments and reduces the need for prior knowledge of noise types. Additionally, we use a Gaussian Mixture Model (GMM) to divide the entire training set into labeled and unlabeled subsets, followed by robust training using semi-supervised learning (SSL) techniques. Furthermore, we propose a recalibration strategy based on cross-entropy (CE) loss to prevent the models from converging to local optima during the SSL process, thus further improving performance. Ablation experiments on CIFAR-10 with 50% symmetric noise and 40% asymmetric noise demonstrate that the two modules introduced in this paper improve the accuracy of the baseline (i.e., DivideMix) by 1.5% and 0.5%, respectively. Moreover, the experimental results on multiple benchmark datasets demonstrate that our proposed method effectively mitigates the impact of noisy labels and significantly enhances the performance of DNNs on noisy datasets. For instance, on the WebVision dataset, our method improves the top-1 accuracy by 0.7% and 2.4% compared to the baseline method.

Funder

National Natural Science Foundation of China

Vocational College of Jiangsu Province Student Innovation and Entrepreneurship Incubation Program

Natural Science Foundation of the Jiangsu Higher Education Institutions of China

Jiangsu Provincial Education Science Planning Project “Research on Adaptive Learning Recommendations Based on Knowledge Graphs and Learning Styles”

Jiangsu Provincial Higher Education Teaching Reform Project “Adaptive Learning Path Recommendations Based on Educational Knowledge Graphs”

Publisher

MDPI AG

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