Aversion to Hiring Algorithms: Transparency, Gender Profiling, and Self-Confidence

Authors:

Dargnies, Marie-Pierre (University of Paris Dauphine, PSL)
Hakimov, Rustamdjan (University of Lausanne and WZB Berlin)
Kübler, Dorothea (WZB Berlin and TU Berlin)

Abstract:

We run an online experiment to study the origins of algorithm aversion. Participants are either in the role of workers or of managers. Workers perform three real-effort tasks: task 1, task 2, and the job task which is a combination of tasks 1 and 2. They choose whether the hiring decision between themselves and another worker is made either by a participant in the role of a manager or by an algorithm. In a second set of experiments, managers choose whether they want to delegate their hiring decisions to the algorithm. In the baseline treatments, we observe that workers choose the manager more often than the algorithm, and managers also prefer to make the hiring decisions themselves rather than delegate them to the algorithm. When the algorithm does not use workers’ gender to predict their job task performance and workers know this, they choose the algorithm more often. Providing details on how the algorithm works does not increase the preference for the algorithm, neither for workers nor for managers. Providing feedback to managers about their performance in hiring the best workers increases their preference for the algorithm, as managers are, on average, overconfident.

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Aversion to Hiring Algorithms: Transparency, Gender Profiling, and Self-Confidence