Variational Learning Induces Adaptive Label Smoothing
Machine Learning
2025-03-05 v2 Artificial Intelligence
Abstract
We show that variational learning naturally induces an adaptive label smoothing where label noise is specialized for each example. Such label-smoothing is useful to handle examples with labeling errors and distribution shifts, but designing a good adaptivity strategy is not always easy. We propose to skip this step and simply use the natural adaptivity induced during the optimization of a variational objective. We show empirical results where a variational algorithm called IVON outperforms traditional label smoothing and yields adaptivity strategies similar to those of an existing approach. By connecting Bayesian methods to label smoothing, our work provides a new way to handle overconfident predictions.
Cite
@article{arxiv.2502.07273,
title = {Variational Learning Induces Adaptive Label Smoothing},
author = {Sin-Han Yang and Zhedong Liu and Gian Maria Marconi and Mohammad Emtiyaz Khan},
journal= {arXiv preprint arXiv:2502.07273},
year = {2025}
}