English

Measuring Progress on Scalable Oversight for Large Language Models

Human-Computer Interaction 2022-11-15 v2 Artificial Intelligence Computation and Language

Abstract

Developing safe and useful general-purpose AI systems will require us to make progress on scalable oversight: the problem of supervising systems that potentially outperform us on most skills relevant to the task at hand. Empirical work on this problem is not straightforward, since we do not yet have systems that broadly exceed our abilities. This paper discusses one of the major ways we think about this problem, with a focus on ways it can be studied empirically. We first present an experimental design centered on tasks for which human specialists succeed but unaided humans and current general AI systems fail. We then present a proof-of-concept experiment meant to demonstrate a key feature of this experimental design and show its viability with two question-answering tasks: MMLU and time-limited QuALITY. On these tasks, we find that human participants who interact with an unreliable large-language-model dialog assistant through chat -- a trivial baseline strategy for scalable oversight -- substantially outperform both the model alone and their own unaided performance. These results are an encouraging sign that scalable oversight will be tractable to study with present models and bolster recent findings that large language models can productively assist humans with difficult tasks.

Keywords

Cite

@article{arxiv.2211.03540,
  title  = {Measuring Progress on Scalable Oversight for Large Language Models},
  author = {Samuel R. Bowman and Jeeyoon Hyun and Ethan Perez and Edwin Chen and Craig Pettit and Scott Heiner and Kamilė Lukošiūtė and Amanda Askell and Andy Jones and Anna Chen and Anna Goldie and Azalia Mirhoseini and Cameron McKinnon and Christopher Olah and Daniela Amodei and Dario Amodei and Dawn Drain and Dustin Li and Eli Tran-Johnson and Jackson Kernion and Jamie Kerr and Jared Mueller and Jeffrey Ladish and Joshua Landau and Kamal Ndousse and Liane Lovitt and Nelson Elhage and Nicholas Schiefer and Nicholas Joseph and Noemí Mercado and Nova DasSarma and Robin Larson and Sam McCandlish and Sandipan Kundu and Scott Johnston and Shauna Kravec and Sheer El Showk and Stanislav Fort and Timothy Telleen-Lawton and Tom Brown and Tom Henighan and Tristan Hume and Yuntao Bai and Zac Hatfield-Dodds and Ben Mann and Jared Kaplan},
  journal= {arXiv preprint arXiv:2211.03540},
  year   = {2022}
}

Comments

v2 fixes a few typos from v1

R2 v1 2026-06-28T05:19:39.723Z