Learning with confidence: training better classifiers from soft labels

Publication date

2025-09-28

Authors

Vries, Sjoerd deISNI 0000000518083649
Thierens, DirkISNI 0000000390770297

Editors

Advisors

Supervisors

Document Type

Article
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License

cc_by

Abstract

In supervised machine learning, models are typically trained using data with hard labels, i.e., definite assignments of class membership. This traditional approach, however, does not take the inherent uncertainty in these labels into account. We investigate whether incorporating label uncertainty, represented for each instance as a discrete probability distribution over the class labels, known as a soft label, improves the predictive performance of classification models, focusing on tabular data. We first demonstrate the potential value of soft label learning (SLL) for estimating model parameters in a simulation experiment, particularly for limited sample sizes and imbalanced data. Subsequently, we compare the performance of various wrapper methods for learning from both hard and soft labels using identical base classifiers. On real-world-inspired synthetic data with clean labels, the SLL methods consistently outperform the hard label methods. Since real-world data is often noisy and precise soft labels are challenging to obtain, we study the effect that noisy probability estimates have on model performance. Alongside conventional noise models, our study examines four types of miscalibration that are known to affect human annotators. The results show that SLL methods outperform the hard label methods in the majority of settings. Finally, we evaluate the methods on a real-world dataset with confidence scores, where the SLL methods are shown to match the traditional methods for predicting the (noisy) hard labels while providing more accurate confidence estimates.

Keywords

Calibration, Classification, Confidence scores, Ensemble learning, Soft label learning

Citation

de Vries, S & Thierens, D 2025, 'Learning with confidence : training better classifiers from soft labels', Machine Learning, vol. 114, no. 11, 238, pp. 1-37. https://doi.org/10.1007/s10994-025-06860-8