Benchmarking Overton Pluralism in LLMs

Abstract

We introduce OVERTONBENCH, a novel framework for measuring Overton pluralism in LLMs—the extent to which diverse viewpoints are represented in model outputs. We (i) formalize Overton pluralism as a set coverage metric (OVERTONSCORE), (ii) conduct a large-scale U.S.-representative human study (N = 1208; 60 questions; 8 LLMs), and (iii) develop an automated benchmark that closely reproduces human judgments. On average, models achieve OVERTONSCOREs of 0.35–0.41, with DeepSeek V3 performing best; yet all models remain far below the theoretical maximum of 1.0, revealing substantial headroom for improvement. Because repeated large-scale human studies are costly and slow, scalable evaluation tools are essential for model development. Hence, we propose an automated benchmark that achieves high rank correlation with human judgments ($\rho = 0.88$), providing a practical proxy without replacing human assessment. By turning pluralistic alignment from a normative aim into a measurable benchmark, our work establishes a foundation for systematic progress toward more pluralistic LLMs.

Cite

Text

Poole-Dayan et al. "Benchmarking Overton Pluralism in LLMs." International Conference on Learning Representations, 2026.

Markdown

[Poole-Dayan et al. "Benchmarking Overton Pluralism in LLMs." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/pooledayan2026iclr-benchmarking/)

BibTeX

@inproceedings{pooledayan2026iclr-benchmarking,
  title     = {{Benchmarking Overton Pluralism in LLMs}},
  author    = {Poole-Dayan, Elinor and Wu, Jiayi and Sorensen, Taylor and Pei, Jiaxin and Bakker, Michiel A.},
  booktitle = {International Conference on Learning Representations},
  year      = {2026},
  url       = {https://mlanthology.org/iclr/2026/pooledayan2026iclr-benchmarking/}
}