Scientific Reports (Nov 2021)

Objective and bias-free measures of candidate motivation during job applications

  • Mitchel Kappen,
  • Marnix Naber

DOI
https://doi.org/10.1038/s41598-021-00659-y
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 8

Abstract

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Abstract Society suffers from biases and discrimination, a longstanding dilemma that stems from ungrounded, subjective judgments. Especially unequal opportunities in labor remain a persistent challenge, despite the recent inauguration of top-down diplomatic measures. Here we propose a solution by using an objective approach to the measurement of nonverbal behaviors of job candidates that trained for a job assessment. First, we implemented and developed artificial intelligence, computer vision, and unbiased machine learning software to automatically detect facial muscle activity and emotional expressions to predict the candidates’ self-reported motivation levels. The motivation judgments by our model outperformed recruiters’ unreliable, invalid, and sometimes biased judgments. These findings mark the necessity and usefulness of novel, bias-free, and scientific approaches to candidate and employee screening and selection procedures in recruitment and human resources.