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April 10, 2026 by Gary Price

Research Paper (preprint): “Ads in AI Chatbots? An Analysis of How Large Language Models Navigate Conflicts of Interest”

April 10, 2026 by Gary Price

The preprint linked below was recently shared on arXiv.

Title

Ads in AI Chatbots? An Analysis of How Large Language Models Navigate Conflicts of Interest

Authors 

Addison J. Wu
Princeton University

Ryan Liu
Princeton University

Shuyue Stella Li
University of Washington

Yulia Tsvetkov
University of Washington

Thomas L. Griffiths
Princeton University

Source

via arXiv
DOI: 10.48550/arXiv.2604.08525

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 handle these tradeoffs. We find that a majority of LLMs forsake user welfare for company incentives in a multitude of conflict of interest situations, including recommending a sponsored product almost twice as expensive (Grok 4.1 Fast, 83%), surfacing sponsored options to disrupt the purchasing process (GPT 5.1, 94%), and concealing prices in unfavorable comparisons (Qwen 3 Next, 24%). Behaviors also vary strongly with levels of reasoning and users’ inferred socio-economic status. Our results highlight some of the hidden risks to users that can emerge when companies begin to subtly incentivize advertisements in chatbots.

Direct to Abstract + Link to Full Text

Filed under: Journal Articles, News, Patrons and Users

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About Gary Price

Gary Price (gprice@gmail.com) is a librarian, writer, consultant, and frequent conference speaker based in the Washington D.C. metro area. He earned his MLIS degree from Wayne State University in Detroit. Price has won several awards including the SLA Innovations in Technology Award and Alumnus of the Year from the Wayne St. University Library and Information Science Program. From 2006-2009 he was Director of Online Information Services at Ask.com.

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