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Auteurs principaux: Alali, Salah Feras, Maasfeh, Mohammad Nashat, Kutlu, Mucahid, Kardas, Saban
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2601.17016
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author Alali, Salah Feras
Maasfeh, Mohammad Nashat
Kutlu, Mucahid
Kardas, Saban
author_facet Alali, Salah Feras
Maasfeh, Mohammad Nashat
Kutlu, Mucahid
Kardas, Saban
contents With the incredible advancements in Large Language Models (LLMs), many people have started using them to satisfy their information needs. However, utilizing LLMs might be problematic for political issues where disagreement is common and model outputs may reflect training-data biases or deliberate alignment choices. To better characterize such behavior, we assess the stances of nine LLMs on 24 politically sensitive issues using five prompting techniques. We find that models often adopt opposing stances on several issues; some positions are malleable under prompting, while others remain stable. Among the models examined, Grok-3-mini is the most persistent, whereas Mistral-7B is the least. For issues involving countries with different languages, models tend to support the side whose language is used in the prompt. Notably, no prompting technique alters model stances on the Qatar blockade or the oppression of Palestinians. We hope these findings raise user awareness when seeking political guidance from LLMs and encourage developers to address these concerns.
format Preprint
id arxiv_https___arxiv_org_abs_2601_17016
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Measuring Political Stance and Consistency in Large Language Models
Alali, Salah Feras
Maasfeh, Mohammad Nashat
Kutlu, Mucahid
Kardas, Saban
Computers and Society
Artificial Intelligence
With the incredible advancements in Large Language Models (LLMs), many people have started using them to satisfy their information needs. However, utilizing LLMs might be problematic for political issues where disagreement is common and model outputs may reflect training-data biases or deliberate alignment choices. To better characterize such behavior, we assess the stances of nine LLMs on 24 politically sensitive issues using five prompting techniques. We find that models often adopt opposing stances on several issues; some positions are malleable under prompting, while others remain stable. Among the models examined, Grok-3-mini is the most persistent, whereas Mistral-7B is the least. For issues involving countries with different languages, models tend to support the side whose language is used in the prompt. Notably, no prompting technique alters model stances on the Qatar blockade or the oppression of Palestinians. We hope these findings raise user awareness when seeking political guidance from LLMs and encourage developers to address these concerns.
title Measuring Political Stance and Consistency in Large Language Models
topic Computers and Society
Artificial Intelligence
url https://arxiv.org/abs/2601.17016