English

Response Time Enhances Alignment with Heterogeneous Preferences

Machine Learning 2026-05-11 v1 Computer Science and Game Theory Theoretical Economics Machine Learning

Abstract

Aligning large language models (LLMs) to human preferences typically relies on aggregating pooled feedback into a single reward model. However, this standard approach assumes that all labelers share the same underlying preferences, ignoring the fact that real-world labelers are highly heterogeneous and usually anonymous. Consequently, relying solely on binary choice data fundamentally distorts the learned policy, making the true population-average preference unidentifiable. To overcome this critical limitation, we demonstrate that augmenting preference datasets with a simple, secondary signal -- the user's response time -- can restore the identifiability of the population's average preference. By modeling each decision as a Drift-Diffusion Model (DDM), we introduce a novel, consistent estimator of heterogeneous preferences that successfully corrects the distortions of standard choice-only labels. We prove that our estimator asymptotically converges to the true average preference even in extreme cases where each anonymous labeler contributes only a single choice. Empirically, across both synthetic and real-world datasets, our method consistently outperforms standard baselines that otherwise fail and plateau at a bias floor. Because response times are essentially free to record and require zero user tracking or identification, our results bring promises and open up new opportunities for future data-collection pipelines to improve the social benefit without requiring user-level identifiers or repeated elicitations.

Keywords

Cite

@article{arxiv.2605.06987,
  title  = {Response Time Enhances Alignment with Heterogeneous Preferences},
  author = {Federico Echenique and Alireza Fallah and Baihe Huang and Michael I. Jordan},
  journal= {arXiv preprint arXiv:2605.06987},
  year   = {2026}
}
R2 v1 2026-07-01T12:56:25.775Z