Improving the Distributional Alignment of LLMs using Supervision
Computation and Language
2026-04-22 v4
Abstract
The ability to accurately align LLMs with diverse population groups on subjective questions would have great value. In this work, we show that adding simple supervision can more consistently improve the alignment of LLM-generated distributions with diverse population groups, as measured across three datasets spanning public health, public opinion, and values and beliefs. Beyond evaluating average alignment, we also report how alignment varies across specific groups. Our broad findings provide insights into the distributional alignment of LLM generations with diverse populations. By conducting evaluation over many LLMs and prompting strategies, we provide a benchmark to stimulate future research.
Cite
@article{arxiv.2507.00439,
title = {Improving the Distributional Alignment of LLMs using Supervision},
author = {Gauri Kambhatla and Sanjana Gautam and Angela Zhang and Alex Liu and Ravi Srinivasan and Junyi Jessy Li and Matthew Lease},
journal= {arXiv preprint arXiv:2507.00439},
year = {2026}
}
Comments
ACL Main 2026