English

Generalizing while preserving monotonicity in comparison-based preference learning models

Statistics Theory 2025-10-23 v3 Machine Learning Machine Learning Statistics Theory

Abstract

If you tell a learning model that you prefer an alternative aa over another alternative bb, then you probably expect the model to be monotone, that is, the valuation of aa increases, and that of bb decreases. Yet, perhaps surprisingly, many widely deployed comparison-based preference learning models, including large language models, fail to have this guarantee. Until now, the only comparison-based preference learning algorithms that were proved to be monotone are the Generalized Bradley-Terry models. Yet, these models are unable to generalize to uncompared data. In this paper, we advance the understanding of the set of models with generalization ability that are monotone. Namely, we propose a new class of Linear Generalized Bradley-Terry models with Diffusion Priors, and identify sufficient conditions on alternatives' embeddings that guarantee monotonicity. Our experiments show that this monotonicity is far from being a general guarantee, and that our new class of generalizing models improves accuracy, especially when the dataset is limited.

Keywords

Cite

@article{arxiv.2506.08616,
  title  = {Generalizing while preserving monotonicity in comparison-based preference learning models},
  author = {Julien Fageot and Peva Blanchard and Gilles Bareilles and Lê-Nguyên Hoang},
  journal= {arXiv preprint arXiv:2506.08616},
  year   = {2025}
}

Comments

Accepted at Neurips 2025

R2 v1 2026-07-01T03:08:46.352Z