National Origin Discrimination in Deep-learning-powered Automated Resume Screening
Sihang Li, Kuangzheng Li, Haibing Lu

TL;DR
This paper investigates how deep learning-based resume screening tools can perpetuate national origin bias, raising ethical and legal concerns, and proposes a bias mitigation method validated through experiments.
Contribution
It highlights the bias issues in deep learning resume screening and introduces a novel bias mitigation approach to address these concerns.
Findings
Deep learning models reinforce stereotypes from training data.
Automated screening may favor or disfavor certain demographic groups.
Proposed bias mitigation method effectively reduces bias in experiments.
Abstract
Many companies and organizations have started to use some form of AIenabled auto mated tools to assist in their hiring process, e.g. screening resumes, interviewing candi dates, performance evaluation. While those AI tools have greatly improved human re source operations efficiency and provided conveniences to job seekers as well, there are increasing concerns on unfair treatment to candidates, caused by underlying bias in AI systems. Laws around equal opportunity and fairness, like GDPR, CCPA, are introduced or under development, in attempt to regulate AI. However, it is difficult to implement AI regulations in practice, as technologies are constantly advancing and the risk perti nent to their applications can fail to be recognized. This study examined deep learning methods, a recent technology breakthrough, with focus on their application to automated resume screening. One impressive…
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Taxonomy
TopicsData Quality and Management
Methodsfail · Focus
