TY - JOUR
T1 - Beyond traditional interviews
T2 - Psychometric analysis of asynchronous video interviews for personality and interview performance evaluation using machine learning
AU - Koutsoumpis, Antonis
AU - Ghassemi, Sina
AU - Oostrom, Janneke K.
AU - Holtrop, Djurre
AU - van Breda, Ward
AU - Zhang, Tianyi
AU - de Vries, Reinout E.
N1 - Publisher Copyright:
© 2024 The Authors
PY - 2024/5
Y1 - 2024/5
N2 - With the advent of new technology, traditional job interviews have been supplemented by asynchronous video interviews (AVIs). However, research on psychometric properties of AVIs is limited. In this study, 710 participants completed a mock AVI responding to eight personality questions (Extraversion, Conscientiousness). We collected self- and observer reports of personality, interview performance ratings, attractiveness, and AVI meta-information (e.g., professional attire, audio quality). Then, we automatically extracted the words, facial expressions, and voice characteristics from the videos and trained machine learning models to predict the personality traits and interview performance. Our algorithm explained substantially more variance in observer reports of Extraversion and Conscientiousness (average R2 = 0.32) and interview performance (R2 = 0.44), than self-reported Extraversion and Conscientiousness (average R2 = 0.12). Consistent with Trait Activation Theory, the explained variance in personality traits increased when participants responded to trait-relevant, compared to trait-irrelevant, questions. The test-retest reliability of our algorithm was somewhat stable over a time period of seven months, but lower than desired reliability standards in personnel selection. We examined potential sources of bias, including age, gender, and attractiveness, and found some instances of algorithmic bias (e.g., gender differences were often amplified in favor of women).
AB - With the advent of new technology, traditional job interviews have been supplemented by asynchronous video interviews (AVIs). However, research on psychometric properties of AVIs is limited. In this study, 710 participants completed a mock AVI responding to eight personality questions (Extraversion, Conscientiousness). We collected self- and observer reports of personality, interview performance ratings, attractiveness, and AVI meta-information (e.g., professional attire, audio quality). Then, we automatically extracted the words, facial expressions, and voice characteristics from the videos and trained machine learning models to predict the personality traits and interview performance. Our algorithm explained substantially more variance in observer reports of Extraversion and Conscientiousness (average R2 = 0.32) and interview performance (R2 = 0.44), than self-reported Extraversion and Conscientiousness (average R2 = 0.12). Consistent with Trait Activation Theory, the explained variance in personality traits increased when participants responded to trait-relevant, compared to trait-irrelevant, questions. The test-retest reliability of our algorithm was somewhat stable over a time period of seven months, but lower than desired reliability standards in personnel selection. We examined potential sources of bias, including age, gender, and attractiveness, and found some instances of algorithmic bias (e.g., gender differences were often amplified in favor of women).
KW - Algorithmic bias
KW - Artificial intelligence
KW - Asynchronous video interview
KW - Personality
KW - Trait activation theory
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U2 - 10.1016/j.chb.2023.108128
DO - 10.1016/j.chb.2023.108128
M3 - Article
AN - SCOPUS:85182908011
SN - 0747-5632
VL - 154
SP - 1
EP - 18
JO - Computers in Human Behavior
JF - Computers in Human Behavior
M1 - 108128
ER -