As AI agents surpass human capabilities, scalable oversight -- the problem of effectively supplying human feedback to potentially superhuman AI models -- becomes increasingly critical to ensure alignment. While numerous scalable oversight protocols have been proposed, they lack a systematic empirical framework to evaluate and compare them. While recent works have tried to empirically study scalable oversight protocols -- particularly Debate -- we argue that the experiments they conduct are not generalizable to other protocols. We introduce the scalable oversight benchmark, a principled framework for evaluating human feedback mechanisms based on our agent score difference (ASD) metric, a measure of how effectively a mechanism advantages truth-telling over deception. We supply a Python package to facilitate rapid and competitive evaluation of scalable oversight protocols on our benchmark, and conduct a demonstrative experiment benchmarking Debate.
@article{arxiv.2504.03731,
title = {A Benchmark for Scalable Oversight Protocols},
author = {Abhimanyu Pallavi Sudhir and Jackson Kaunismaa and Arjun Panickssery},
journal= {arXiv preprint arXiv:2504.03731},
year = {2025}
}
Comments
Accepted at the ICLR 2025 Workshop on Bidirectional Human-AI Alignment (BiAlign)