Hiring Fairly in the Age of Algorithms
April 15, 2020 Β· Declared Dead Β· π Social Science Research Network
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Authors
Max Langenkamp, Allan Costa, Chris Cheung
arXiv ID
2004.07132
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.CY
Citations
31
Venue
Social Science Research Network
Last Checked
4 months ago
Abstract
Widespread developments in automation have reduced the need for human input. However, despite the increased power of machine learning, in many contexts these programs make decisions that are problematic. Biases within data and opaque models have amplified human prejudices, giving rise to such tools as Amazon's (now defunct) experimental hiring algorithm, which was found to consistently downgrade resumes when the word "women's" was added before an activity. This article critically surveys the existing legal and technological landscape surrounding algorithmic hiring. We argue that the negative impact of hiring algorithms can be mitigated by greater transparency from the employers to the public, which would enable civil advocate groups to hold employers accountable, as well as allow the U.S. Department of Justice to litigate. Our main contribution is a framework for automated hiring transparency, algorithmic transparency reports, which employers using automated hiring software would be required to publish by law. We also explain how existing regulations in employment and trade secret law can be extended by the Equal Employment Opportunity Commission and Congress to accommodate these reports.
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