English

Calibration without Ground Truth

Machine Learning 2026-01-28 v1 Computer Science and Game Theory

Abstract

Villalobos et al. [2024] predict that publicly available human text will be exhausted within the next decade. Thus, improving models without access to ground-truth labels becomes increasingly important. We propose a label-free post-processing framework that improves a strong but miscalibrated model using a weaker yet better-calibrated reference. Our framework guarantees a strict performance improvement under any proper loss. Our approach is based on a characterization of when strict improvement is possible: when the strong and reference models are not mutually calibrated. We formalize this condition, connect it to arbitrage and no-trade results from economics, and develop an efficient Bregman projection algorithm that guarantees worst-case loss reduction without labels. Experiments on representative LLMs across varying scales demonstrate that our label-free method significantly reduces proper losses and calibration errors, achieving performance competitive with supervised baselines.

Keywords

Cite

@article{arxiv.2601.19862,
  title  = {Calibration without Ground Truth},
  author = {Yuqing Kong and Mingyu Song and Yizhou Wang and Yifan Wu},
  journal= {arXiv preprint arXiv:2601.19862},
  year   = {2026}
}
R2 v1 2026-07-01T09:22:40.774Z