Ads in AI Chatbots? An Analysis of How Large Language Models Navigate Conflicts of Interest
Addison J. Wu, Ryan Liu, Shuyue Stella Li, Yulia Tsvetkov, Thomas L. Griffiths

TL;DR
This paper examines how large language models (LLMs) may prioritize company incentives over user welfare when integrating advertisements, revealing potential conflicts of interest and associated risks.
Contribution
It introduces a framework for understanding conflicts of interest in LLMs and evaluates current models' tendencies to favor company incentives over user interests.
Findings
Most LLMs recommend more expensive sponsored products (up to 83%)
Models frequently surface sponsored options to disrupt purchasing (up to 94%)
Some models conceal prices in unfavorable comparisons (24%)
Abstract
Today's large language models (LLMs) are trained to align with user preferences through methods such as reinforcement learning. Yet models are beginning to be deployed not merely to satisfy users, but also to generate revenue for the companies that created them through advertisements. This creates the potential for LLMs to face conflicts of interest, where the most beneficial response to a user may not be aligned with the company's incentives. For instance, a sponsored product may be more expensive but otherwise equal to another; in this case, what does (and should) the LLM recommend to the user? In this paper, we provide a framework for categorizing the ways in which conflicting incentives might lead LLMs to change the way they interact with users, inspired by literature from linguistics and advertising regulation. We then present a suite of evaluations to examine how current models…
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