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Main Authors: Schlippe, Tim, Wölfel, Matthias, Mabokela, Koena Ronny
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.17682
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author Schlippe, Tim
Wölfel, Matthias
Mabokela, Koena Ronny
author_facet Schlippe, Tim
Wölfel, Matthias
Mabokela, Koena Ronny
contents This study investigates how cultural proximity affects the ability to detect AI-generated fake news by comparing South African participants with those from other nationalities. As large language models increasingly enable the creation of sophisticated fake news, understanding human detection capabilities becomes crucial, particularly across different cultural contexts. We conducted a survey where 89 participants (56 South Africans, 33 from other nationalities) evaluated 10 true South African news articles and 10 AI-generated fake versions. Results reveal an asymmetric pattern: South Africans demonstrated superior performance in detecting true news about their country (40% deviation from ideal rating) compared to other participants (52%), but performed worse at identifying fake news (62% vs. 55%). This difference may reflect South Africans' higher overall trust in news sources. Our analysis further shows that South Africans relied more on content knowledge and contextual understanding when judging credibility, while participants from other countries emphasised formal linguistic features such as grammar and structure. Overall, the deviation from ideal rating was similar between groups (51% vs. 53%), suggesting that cultural familiarity appears to aid verification of authentic information but may also introduce bias when evaluating fabricated content. These insights contribute to understanding cross-cultural dimensions of misinformation detection and inform strategies for combating AI-generated fake news in increasingly globalised information ecosystems where content crosses cultural and geographical boundaries.
format Preprint
id arxiv_https___arxiv_org_abs_2511_17682
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Cross-Cultural Assessment of Human Ability to Detect LLM-Generated Fake News about South Africa
Schlippe, Tim
Wölfel, Matthias
Mabokela, Koena Ronny
Computers and Society
Artificial Intelligence
Computation and Language
This study investigates how cultural proximity affects the ability to detect AI-generated fake news by comparing South African participants with those from other nationalities. As large language models increasingly enable the creation of sophisticated fake news, understanding human detection capabilities becomes crucial, particularly across different cultural contexts. We conducted a survey where 89 participants (56 South Africans, 33 from other nationalities) evaluated 10 true South African news articles and 10 AI-generated fake versions. Results reveal an asymmetric pattern: South Africans demonstrated superior performance in detecting true news about their country (40% deviation from ideal rating) compared to other participants (52%), but performed worse at identifying fake news (62% vs. 55%). This difference may reflect South Africans' higher overall trust in news sources. Our analysis further shows that South Africans relied more on content knowledge and contextual understanding when judging credibility, while participants from other countries emphasised formal linguistic features such as grammar and structure. Overall, the deviation from ideal rating was similar between groups (51% vs. 53%), suggesting that cultural familiarity appears to aid verification of authentic information but may also introduce bias when evaluating fabricated content. These insights contribute to understanding cross-cultural dimensions of misinformation detection and inform strategies for combating AI-generated fake news in increasingly globalised information ecosystems where content crosses cultural and geographical boundaries.
title A Cross-Cultural Assessment of Human Ability to Detect LLM-Generated Fake News about South Africa
topic Computers and Society
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2511.17682