Benchmarks for Detecting Measurement Tampering

Bibliographic Details
Title: Benchmarks for Detecting Measurement Tampering
Authors: Roger, Fabien, Greenblatt, Ryan, Nadeau, Max, Shlegeris, Buck, Thomas, Nate
Publication Year: 2023
Collection: Computer Science
Subject Terms: Computer Science - Machine Learning
More Details: When training powerful AI systems to perform complex tasks, it may be challenging to provide training signals which are robust to optimization. One concern is \textit{measurement tampering}, where the AI system manipulates multiple measurements to create the illusion of good results instead of achieving the desired outcome. In this work, we build four new text-based datasets to evaluate measurement tampering detection techniques on large language models. Concretely, given sets of text inputs and measurements aimed at determining if some outcome occurred, as well as a base model able to accurately predict measurements, the goal is to determine if examples where all measurements indicate the outcome occurred actually had the outcome occur, or if this was caused by measurement tampering. We demonstrate techniques that outperform simple baselines on most datasets, but don't achieve maximum performance. We believe there is significant room for improvement for both techniques and datasets, and we are excited for future work tackling measurement tampering.
Comment: Edits: extended and improved appendices, fixed references, figures, and typos
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2308.15605
Accession Number: edsarx.2308.15605
Database: arXiv
More Details
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