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A Time-Consistency Curriculum for Learning From Instance-Dependent Noisy Labels

Songhua Wu, Tianyi Zhou, Yuxuan Du, Jun Yu, Bo Han, Tongliang Liu

2024IEEE Transactions on Pattern Analysis and Machine Intelligence11 citationsDOI

Abstract

Many machine learning algorithms are known to be fragile on simple instance-independent noisy labels. However, noisy labels in real-world data are more devastating since they are produced by more complicated mechanisms in an instance-dependent manner. In this paper, we target this practical challenge of Instance-Dependent Noisy Labels by jointly training (1) a model reversely engineering the noise generating mechanism, which produces an instance-dependent mapping between the clean label posterior and the observed noisy label and (2) a robust classifier that produces clean label posteriors. Compared to previous methods, the former model is novel and enables end-to-end learning of the latter directly from noisy labels. An extensive empirical study indicates that the time-consistency of data is critical to the success of training both models and motivates us to develop a curriculum selecting training data based on their dynamics on the two models' outputs over the course of training. We show that the curriculum-selected data provide both clean labels and high-quality input-output pairs for training the two models. Therefore, it leads to promising and robust classification performance even in notably challenging settings of instance-dependent noisy labels where many SoTA methods could easily fail. Extensive experimental comparisons and ablation studies further demonstrate the advantages and significance of the time-consistency curriculum in learning from instance-dependent noisy labels on multiple benchmark datasets.

Topics & Concepts

Computer scienceArtificial intelligenceNoisy dataMachine learningClassifier (UML)Robustness (evolution)Consistency (knowledge bases)Training setNoise (video)Synthetic dataData miningChemistryBiochemistryImage (mathematics)GeneMachine Learning and Data ClassificationWater Systems and OptimizationMachine Learning and Algorithms
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