The Impact of Disability Disclosure on Fairness and Bias in LLM-Driven Candidate Selection
Journal:
arXiv
Published Date:
May 30, 2025
Abstract
As large language models (LLMs) become increasingly integrated into hiring
processes, concerns about fairness have gained prominence. When applying for
jobs, companies often request/require demographic information, including
gender, race, and disability or veteran status. This data is collected to
support diversity and inclusion initiatives, but when provided to LLMs,
especially disability-related information, it raises concerns about potential
biases in candidate selection outcomes. Many studies have highlighted how
disability can impact CV screening, yet little research has explored the
specific effect of voluntarily disclosed information on LLM-driven candidate
selection. This study seeks to bridge that gap. When candidates shared
identical gender, race, qualifications, experience, and backgrounds, and sought
jobs with minimal employment rate gaps between individuals with and without
disabilities (e.g., Cashier, Software Developer), LLMs consistently favored
candidates who disclosed that they had no disability. Even in cases where
candidates chose not to disclose their disability status, the LLMs were less
likely to select them compared to those who explicitly stated they did not have
a disability.