The Generation Gap:Exploring Age Bias in the Underlying Value Systems of Large Language Models
Liu, Siyang, Maturi, Trish, Yi, Bowen, Shen, Siqi, Mihalcea, Rada
–arXiv.org Artificial Intelligence
In this paper, we explore the alignment of values in Large Language Models (LLMs) with specific age groups, leveraging data from the World Value Survey across thirteen categories. Through a diverse set of prompts tailored to ensure response robustness, we find a general inclination of LLM values towards younger demographics, especially in the US. Additionally, we explore the impact of incorporating age identity information in prompts and observe challenges in mitigating value discrepancies with different age cohorts. Our findings highlight the age bias in LLMs and provide insights for future work. Materials for our analysis will be available via anonymous.github
arXiv.org Artificial Intelligence
May-13-2024
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