Name of Thrones: Evaluating How LLMs Rank Student Names, Race, and Gender in Status Hierarchies
Journal:
arXiv
Published Date:
Apr 15, 2025
Abstract
Across cultures, names tell a lot about their bearers as they carry deep
personal and cultural significance. Names also serve as powerful signals of
gender, race, and status in the social hierarchy - a pecking order in which
individual positions shape others' expectations on their perceived competence
and worth. With the widespread adoption of LLMs and as names are often an input
for LLMs, it is crucial to evaluate whether LLMs may sort people into status
positions based on first and last names and, if so, whether it is in an unfair,
biased fashion. While prior work has primarily investigated biases in first
names, little attention has been paid to last names and even less to the
combined effects of first and last names. In this study, we conduct a
large-scale analysis of name variations across 5 ethnicities to examine how AI
exhibits name biases. Our study investigates three key characteristics of
inequality and finds that LLMs reflect and reinforce status hierarchies based
on names that signal gender and ethnicity as they encode differential
expectations of competence, leadership, and economic potential. Contrary to the
common assumption that AI tends to favor Whites, we show that East and, in some
contexts, South Asian names receive higher rankings. We also disaggregate
Asians, a population projected to be the largest immigrant group in the U.S. by
2055. Our results challenge the monolithic Asian model minority assumption,
illustrating a more complex and stratified model of bias. Gender moderates
biases, with girls facing unfair disadvantages in certain racial groups.
Additionally, spanning cultural categories by adopting Western first names
improves AI-perceived status for East and Southeast Asian students,
particularly for girls. Our findings underscore the importance of
intersectional and more nuanced understandings of race, gender, and mixed
identities in the evaluation of LLMs.