Bias audit laws: how effective are they at preventing bias in automated employment decision tools?

Hilliard, Airlie; Gulley, Ayesha; Koshiyama, Adriano and Kazim, Emre. 2024. Bias audit laws: how effective are they at preventing bias in automated employment decision tools? International Review of Law, Computers & Technology, ISSN 1360-0869 [Article] (In Press)

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Abstract or Description

Automated employment decision tools use machine learning, artificial intelligence, predictive analytics, and other data-driven approaches to enhance candidate experiences and streamline employment related decision-making, allowing human resources to be concentrated where they are needed most. However, the use of these tools without appropriate safeguards has resulted in a number of high-profile scandals in recent years, particularly in regard to bias. Accordingly, lawmakers have started to propose laws that require bias audits of automated employment decision tools to examine their outputs for subgroup differences. The first of its kind was New York City Local Law 144, but other US states have since followed suit. In this paper, we examine the concerns about the effectiveness of this and other similar laws, including the suitability of metrics, the scope of the law, and low levels of compliance. We conclude that despite the law being a good initial first step towards greater transparency around automated employment decision tools and reducing bias, examining outcomes alone is not sufficient to prevent bias elsewhere in the tool. Moreover, effective bias prevention will require a multidisciplinary approach that combines expertise in IO psychology, law, and computer science to develop appropriate metrics and maximize the enforceability of such laws.

Item Type:

Article

Identification Number (DOI):

https://doi.org/10.1080/13600869.2024.2403053

Keywords:

Bias audit; automated employment decision tool; adverse impact

Departments, Centres and Research Units:

Institute of Management Studies

Dates:

DateEvent
19 March 2024Submitted
8 September 2024Accepted
12 September 2024Published Online

Item ID:

37547

Date Deposited:

18 Sep 2024 08:31

Last Modified:

18 Sep 2024 08:31

Peer Reviewed:

Yes, this version has been peer-reviewed.

URI:

https://research.gold.ac.uk/id/eprint/37547

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