CLOct 29, 2025

Ideology-Based LLMs for Content Moderation

arXiv:2510.25805v11 citationsh-index: 4
Originality Incremental advance
AI Analysis

This research addresses the problem of subtle ideological biases in AI content moderation systems, which could reinforce partisan perspectives, making it an incremental but important finding for developers and users of such systems.

The study examined how persona adoption influences the consistency and fairness of harmful content classification in LLMs, finding that personas with different ideological leanings show distinct propensities to label content as harmful, with models aligning more closely within the same ideology and widening divergence across groups.

Large language models (LLMs) are increasingly used in content moderation systems, where ensuring fairness and neutrality is essential. In this study, we examine how persona adoption influences the consistency and fairness of harmful content classification across different LLM architectures, model sizes, and content modalities (language vs. vision). At first glance, headline performance metrics suggest that personas have little impact on overall classification accuracy. However, a closer analysis reveals important behavioral shifts. Personas with different ideological leanings display distinct propensities to label content as harmful, showing that the lens through which a model "views" input can subtly shape its judgments. Further agreement analyses highlight that models, particularly larger ones, tend to align more closely with personas from the same political ideology, strengthening within-ideology consistency while widening divergence across ideological groups. To show this effect more directly, we conducted an additional study on a politically targeted task, which confirmed that personas not only behave more coherently within their own ideology but also exhibit a tendency to defend their perspective while downplaying harmfulness in opposing views. Together, these findings highlight how persona conditioning can introduce subtle ideological biases into LLM outputs, raising concerns about the use of AI systems that may reinforce partisan perspectives under the guise of neutrality.

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