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Main Authors: Bernardelle, Pietro, Civelli, Stefano, Fröhling, Leon, Lunardi, Riccardo, Roitero, Kevin, Demartini, Gianluca
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.16013
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author Bernardelle, Pietro
Civelli, Stefano
Fröhling, Leon
Lunardi, Riccardo
Roitero, Kevin
Demartini, Gianluca
author_facet Bernardelle, Pietro
Civelli, Stefano
Fröhling, Leon
Lunardi, Riccardo
Roitero, Kevin
Demartini, Gianluca
contents Large language models (LLMs) are increasingly deployed in politically sensitive settings, raising concerns about their potential to encode, amplify, or be steered toward specific ideologies. We investigate how adopting synthetic personas influences ideological expression in LLMs across seven models (7B-70B+ parameters) from multiple families, using the Political Compass Test as a standardized probe. Our analysis reveals four consistent patterns: (i) larger models display broader and more polarized implicit ideological coverage; (ii) susceptibility to explicit ideological cues grows with scale; (iii) models respond more strongly to right-authoritarian than to left-libertarian priming; and (iv) thematic content in persona descriptions induces systematic and predictable ideological shifts, which amplify with size. These findings indicate that both scale and persona content shape LLM political behavior. As such systems enter decision-making, educational, and policy contexts, their latent ideological malleability demands attention to safeguard fairness, transparency, and safety.
format Preprint
id arxiv_https___arxiv_org_abs_2508_16013
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Political Ideology Shifts in Large Language Models
Bernardelle, Pietro
Civelli, Stefano
Fröhling, Leon
Lunardi, Riccardo
Roitero, Kevin
Demartini, Gianluca
Computation and Language
Large language models (LLMs) are increasingly deployed in politically sensitive settings, raising concerns about their potential to encode, amplify, or be steered toward specific ideologies. We investigate how adopting synthetic personas influences ideological expression in LLMs across seven models (7B-70B+ parameters) from multiple families, using the Political Compass Test as a standardized probe. Our analysis reveals four consistent patterns: (i) larger models display broader and more polarized implicit ideological coverage; (ii) susceptibility to explicit ideological cues grows with scale; (iii) models respond more strongly to right-authoritarian than to left-libertarian priming; and (iv) thematic content in persona descriptions induces systematic and predictable ideological shifts, which amplify with size. These findings indicate that both scale and persona content shape LLM political behavior. As such systems enter decision-making, educational, and policy contexts, their latent ideological malleability demands attention to safeguard fairness, transparency, and safety.
title Political Ideology Shifts in Large Language Models
topic Computation and Language
url https://arxiv.org/abs/2508.16013