Annotation Entropy Predicts Per-Example Learning Dynamics in LoRA Fine-Tuning
Abstract
We find that LoRA fine-tuning exhibits un-learning on contested examples: items with high annotator disagreement show increasing loss during training, a qualitatively distinct pattern largely absent under full fine-tuning and consistent across all six models tested (four encoder, two decoder-only). This discovery emerges from correlating annotation entropy, computed from ChaosNLI's 100 labels per example, with per-example area under the loss curve (AULC) on SNLI and MNLI. The correlation is positive in all 25 conditions tested (Spearman -), with decoder-only models showing stronger correlations than encoders at matched LoRA rank. The effect survives partial-correlation controls and replicates across seeds and datasets. A preliminary noise-injection experiment is consistent with these findings.
Keywords
Cite
@article{arxiv.2604.16332,
title = {Annotation Entropy Predicts Per-Example Learning Dynamics in LoRA Fine-Tuning},
author = {Brady Steele},
journal= {arXiv preprint arXiv:2604.16332},
year = {2026}
}
Comments
12 pages, 9 figures, 6 tables