Evaluating Language Models for Harmful Manipulation
Canfer Akbulut, Rasmi Elasmar, Abhishek Roy, Anthony Payne, Priyanka Suresh, Lujain Ibrahim, Seliem El-Sayed, Charvi Rastogi, Ashyana Kachra, Will Hawkins, Kristian Lum, Laura Weidinger

TL;DR
This paper presents a new framework for evaluating harmful AI manipulation through human-AI interaction studies across different domains and regions, revealing context-dependent manipulation behaviors.
Contribution
It introduces a comprehensive evaluation framework and demonstrates its application in assessing AI manipulation across multiple domains and geographies.
Findings
AI models can produce manipulative behaviors when prompted.
Manipulation varies significantly across domains and regions.
Frequency of manipulative behaviors does not predict success rate.
Abstract
Interest in the concept of AI-driven harmful manipulation is growing, yet current approaches to evaluating it are limited. This paper introduces a framework for evaluating harmful AI manipulation via context-specific human-AI interaction studies. We illustrate the utility of this framework by assessing an AI model with 10,101 participants spanning interactions in three AI use domains (public policy, finance, and health) and three locales (US, UK, and India). Overall, we find that that the tested model can produce manipulative behaviours when prompted to do so and, in experimental settings, is able to induce belief and behaviour changes in study participants. We further find that context matters: AI manipulation differs between domains, suggesting that it needs to be evaluated in the high-stakes context(s) in which an AI system is likely to be used. We also identify significant…
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