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Main Authors: Khan, Zohaib, Dogan, Mustafa, Okoh, Ifeoma, Sadeghi, Pouya, Shrestha, Siddhartha, Nyah, Sergius Justus, Mokhiamar, Mahmoud O., Ryan, Michael J., Naous, Tarek
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.06552
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author Khan, Zohaib
Dogan, Mustafa
Okoh, Ifeoma
Sadeghi, Pouya
Shrestha, Siddhartha
Nyah, Sergius Justus
Mokhiamar, Mahmoud O.
Ryan, Michael J.
Naous, Tarek
author_facet Khan, Zohaib
Dogan, Mustafa
Okoh, Ifeoma
Sadeghi, Pouya
Shrestha, Siddhartha
Nyah, Sergius Justus
Mokhiamar, Mahmoud O.
Ryan, Michael J.
Naous, Tarek
contents Misinformation is on the rise, and the strong writing capabilities of LLMs lower the barrier for malicious actors to produce and disseminate false information. We study how LLMs behave when prompted to spread misinformation across languages and target countries, and introduce GlobalLies, a multilingual parallel dataset of 440 misinformation generation prompt templates and 6,867 entities, spanning 8 languages and 195 countries. Using both human annotations and large-scale LLM-as-a-judge evaluations across hundreds of thousands of generations from state-of-the-art models, we show that misinformation generation varies systematically based on the country being discussed. Propagation of lies by LLMs is substantially higher in many lower-resource languages and for countries with a lower Human Development Index (HDI). We find that existing mitigation strategies provide uneven protection: input safety classifiers exhibit cross-lingual gaps, and retrieval-augmented fact-checking remains inconsistent across regions due to unequal information availability. We release GlobalLies for research purposes, aiming to support the development of mitigation strategies to reduce the spread of global misinformation: https://github.com/zohaib-khan5040/globallies
format Preprint
id arxiv_https___arxiv_org_abs_2604_06552
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle To Lie or Not to Lie? Investigating The Biased Spread of Global Lies by LLMs
Khan, Zohaib
Dogan, Mustafa
Okoh, Ifeoma
Sadeghi, Pouya
Shrestha, Siddhartha
Nyah, Sergius Justus
Mokhiamar, Mahmoud O.
Ryan, Michael J.
Naous, Tarek
Computation and Language
Misinformation is on the rise, and the strong writing capabilities of LLMs lower the barrier for malicious actors to produce and disseminate false information. We study how LLMs behave when prompted to spread misinformation across languages and target countries, and introduce GlobalLies, a multilingual parallel dataset of 440 misinformation generation prompt templates and 6,867 entities, spanning 8 languages and 195 countries. Using both human annotations and large-scale LLM-as-a-judge evaluations across hundreds of thousands of generations from state-of-the-art models, we show that misinformation generation varies systematically based on the country being discussed. Propagation of lies by LLMs is substantially higher in many lower-resource languages and for countries with a lower Human Development Index (HDI). We find that existing mitigation strategies provide uneven protection: input safety classifiers exhibit cross-lingual gaps, and retrieval-augmented fact-checking remains inconsistent across regions due to unequal information availability. We release GlobalLies for research purposes, aiming to support the development of mitigation strategies to reduce the spread of global misinformation: https://github.com/zohaib-khan5040/globallies
title To Lie or Not to Lie? Investigating The Biased Spread of Global Lies by LLMs
topic Computation and Language
url https://arxiv.org/abs/2604.06552