Who Gets Which Message? Auditing Demographic Bias in LLM-Generated Targeted Text
It addresses bias and fairness in automated communication for socially sensitive applications, highlighting the need for bias-aware generation pipelines and transparent auditing frameworks.
The paper systematically analyzed demographic bias in LLM-generated targeted text, finding consistent age- and gender-based asymmetries where male- and youth-targeted messages emphasized agency and innovation, while female- and senior-targeted messages stressed warmth and care, with persuasion scores significantly higher for younger or male audiences.
Large language models (LLMs) are increasingly capable of generating personalized, persuasive text at scale, raising new questions about bias and fairness in automated communication. This paper presents the first systematic analysis of how LLMs behave when tasked with demographic-conditioned targeted messaging. We introduce a controlled evaluation framework using three leading models -- GPT-4o, Llama-3.3, and Mistral-Large 2.1 -- across two generation settings: Standalone Generation, which isolates intrinsic demographic effects, and Context-Rich Generation, which incorporates thematic and regional context to emulate realistic targeting. We evaluate generated messages along three dimensions: lexical content, language style, and persuasive framing. We instantiate this framework on climate communication and find consistent age- and gender-based asymmetries across models: male- and youth-targeted messages emphasize agency, innovation, and assertiveness, while female- and senior-targeted messages stress warmth, care, and tradition. Contextual prompts systematically amplify these disparities, with persuasion scores significantly higher for messages tailored to younger or male audiences. Our findings demonstrate how demographic stereotypes can surface and intensify in LLM-generated targeted communication, underscoring the need for bias-aware generation pipelines and transparent auditing frameworks that explicitly account for demographic conditioning in socially sensitive applications.