Litcius/Paper detail

Delving Deep Into Label Smoothing

Chang-Bin Zhang, Peng-Tao Jiang, Qibin Hou, Yunchao Wei, Qi Han, Zhen Li, Ming-Ming Cheng

2021IEEE Transactions on Image Processing231 citationsDOIOpen Access PDF

Abstract

Label smoothing is an effective regularization tool for deep neural networks (DNNs), which generates soft labels by applying a weighted average between the uniform distribution and the hard label. It is often used to reduce the overfitting problem of training DNNs and further improve classification performance. In this paper, we aim to investigate how to generate more reliable soft labels. We present an Online Label Smoothing (OLS) strategy, which generates soft labels based on the statistics of the model prediction for the target category. The proposed OLS constructs a more reasonable probability distribution between the target categories and non-target categories to supervise DNNs. Experiments demonstrate that based on the same classification models, the proposed approach can effectively improve the classification performance on CIFAR-100, ImageNet, and fine-grained datasets. Additionally, the proposed method can significantly improve the robustness of DNN models to noisy labels compared to current label smoothing approaches. The source code is available at our project page: https://mmcheng.net/ols/.

Topics & Concepts

SmoothingOverfittingArtificial intelligenceComputer scienceRobustness (evolution)Pattern recognition (psychology)Artificial neural networkRegularization (linguistics)Source codeMachine learningProbability distributionDeep neural networksData miningNoisy dataCode (set theory)Training setInterpretabilityDeep learningMinificationPrior probabilityNoise measurementMathematicsData modelingMachine Learning and Data ClassificationText and Document Classification TechnologiesData Stream Mining Techniques
Delving Deep Into Label Smoothing | Litcius