Taiwei Shi

STEER-BENCH: A Benchmark for Evaluating the Steerability of Large Language Models

Conference on Empirical Methods in Natural Language Processing (EMNLP), 2025

Abstract

Steerability, or the ability of large language models (LLMs) to adapt outputs to align with diverse community-specific norms, perspectives, and communication styles, is critical for real-world applications but remains under-evaluated. We introduce Steer-Bench, a benchmark for assessing population-specific steering using contrasting Reddit communities. Covering 30 contrasting subreddit pairs across 19 domains, Steer-Bench includes over 10,000 instruction-response pairs and validated 5,500 multiple-choice question with corresponding silver labels to test alignment with diverse community norms. Our evaluation of 13 popular LLMs using Steer-Bench reveals that while human experts achieve an accuracy of 81% with silver labels, the best-performing models reach only around 65% accuracy depending on the domain and configuration. Some models lag behind human-level alignment by over 15 percentage points, highlighting significant gaps in community-sensitive steerability. Steer-Bench is a benchmark to systematically assess how effectively LLMs understand community-specific instructions, their resilience to adversarial steering attempts, and their ability to accurately represent diverse cultural and ideological perspectives.

BibTeX

			@article{chen2025steerbench,
  title={STEER-BENCH: A Benchmark for Evaluating the Steerability of Large Language Models},
  author={Kai Chen and Zihao He and Taiwei Shi and Kristina Lerman},
  journal={arXiv preprint arXiv:2505.20645},
  year={2025}
}