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Hauptverfasser: Buyl, Maarten, Rogiers, Alexander, Noels, Sander, Bied, Guillaume, Dominguez-Catena, Iris, Heiter, Edith, Johary, Iman, Mara, Alexandru-Cristian, Romero, Raphaël, Lijffijt, Jefrey, De Bie, Tijl
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2410.18417
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author Buyl, Maarten
Rogiers, Alexander
Noels, Sander
Bied, Guillaume
Dominguez-Catena, Iris
Heiter, Edith
Johary, Iman
Mara, Alexandru-Cristian
Romero, Raphaël
Lijffijt, Jefrey
De Bie, Tijl
author_facet Buyl, Maarten
Rogiers, Alexander
Noels, Sander
Bied, Guillaume
Dominguez-Catena, Iris
Heiter, Edith
Johary, Iman
Mara, Alexandru-Cristian
Romero, Raphaël
Lijffijt, Jefrey
De Bie, Tijl
contents Large language models (LLMs) are trained on vast amounts of data to generate natural language, enabling them to perform tasks like text summarization and question answering. These models have become popular in artificial intelligence (AI) assistants like ChatGPT and already play an influential role in how humans access information. However, the behavior of LLMs varies depending on their design, training, and use. In this paper, we prompt a diverse panel of popular LLMs to describe a large number of prominent personalities with political relevance, in all six official languages of the United Nations. By identifying and analyzing moral assessments reflected in their responses, we find normative differences between LLMs from different geopolitical regions, as well as between the responses of the same LLM when prompted in different languages. Among only models in the United States, we find that popularly hypothesized disparities in political views are reflected in significant normative differences related to progressive values. Among Chinese models, we characterize a division between internationally- and domestically-focused models. Our results show that the ideological stance of an LLM appears to reflect the worldview of its creators. This poses the risk of political instrumentalization and raises concerns around technological and regulatory efforts with the stated aim of making LLMs ideologically 'unbiased'.
format Preprint
id arxiv_https___arxiv_org_abs_2410_18417
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Large Language Models Reflect the Ideology of their Creators
Buyl, Maarten
Rogiers, Alexander
Noels, Sander
Bied, Guillaume
Dominguez-Catena, Iris
Heiter, Edith
Johary, Iman
Mara, Alexandru-Cristian
Romero, Raphaël
Lijffijt, Jefrey
De Bie, Tijl
Computation and Language
Machine Learning
Large language models (LLMs) are trained on vast amounts of data to generate natural language, enabling them to perform tasks like text summarization and question answering. These models have become popular in artificial intelligence (AI) assistants like ChatGPT and already play an influential role in how humans access information. However, the behavior of LLMs varies depending on their design, training, and use. In this paper, we prompt a diverse panel of popular LLMs to describe a large number of prominent personalities with political relevance, in all six official languages of the United Nations. By identifying and analyzing moral assessments reflected in their responses, we find normative differences between LLMs from different geopolitical regions, as well as between the responses of the same LLM when prompted in different languages. Among only models in the United States, we find that popularly hypothesized disparities in political views are reflected in significant normative differences related to progressive values. Among Chinese models, we characterize a division between internationally- and domestically-focused models. Our results show that the ideological stance of an LLM appears to reflect the worldview of its creators. This poses the risk of political instrumentalization and raises concerns around technological and regulatory efforts with the stated aim of making LLMs ideologically 'unbiased'.
title Large Language Models Reflect the Ideology of their Creators
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2410.18417