The Effects of Demographic Instructions on LLM Personas
The Effects of Demographic Instructions on LLM Personas
Social media platforms must filter sexist content in compliance with governmental regulations. Current machine learning approaches can reliably detect sexism based on standardized definitions, but often neglect the subjective nature of sexist language and fail to consider individual users' perspectives. To address this gap, we adopt a perspectivist approach, retaining diverse annotations rather than enforcing gold-standard labels or their aggregations, allowing models to account for personal or group-specific views of sexism. Using demographic data from Twitter, we employ large language models (LLMs) to personalize the identification of sexism.
Angel Felipe Magnoss?o de Paula、J. Shane Culpepper、Alistair Moffat、Sachin Pathiyan Cherumanal、Falk Scholer、Johanne Trippas
计算技术、计算机技术
Angel Felipe Magnoss?o de Paula,J. Shane Culpepper,Alistair Moffat,Sachin Pathiyan Cherumanal,Falk Scholer,Johanne Trippas.The Effects of Demographic Instructions on LLM Personas[EB/OL].(2025-05-16)[2025-07-16].https://arxiv.org/abs/2505.11795.点此复制
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