An External Fairness Evaluation of LinkedIn Talent Search
Tina Behzad, Siddartha Devic, Vatsal Sharan, Aleksandra Korolova, David Kempe

TL;DR
This study conducts an external audit of LinkedIn's Talent Search system to identify gender and race biases, revealing under-representation of minorities and temporal disparities affecting candidate stability.
Contribution
It introduces a third-party bias evaluation methodology for LinkedIn Talent Search, including new metrics and analysis of temporal fairness and stability.
Findings
Minority groups are under-represented in early ranks across many queries.
Demographic disparities exist in the temporal stability of candidate rankings.
External biases are challenging to fully eliminate due to methodological constraints.
Abstract
We conduct an independent, third-party audit for bias of LinkedIn's Talent Search ranking system, focusing on potential ranking bias across two attributes: gender and race. To do so, we first construct a dataset of rankings produced by the system, collecting extensive Talent Search results across a diverse set of occupational queries. We then develop a robust labeling pipeline that infers the two demographic attributes of interest for the returned users. To evaluate potential biases in the collected dataset of real-world rankings, we utilize two exposure disparity metrics: deviation from group proportions and MinSkew. Our analysis reveals an under-representation of minority groups in early ranks across many queries. We further examine potential causes of this disparity, and discuss why they may be difficult or, in some cases, impossible to fully eliminate among the early ranks of…
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Taxonomy
TopicsEthics and Social Impacts of AI · Mobile Crowdsensing and Crowdsourcing · Names, Identity, and Discrimination Research
