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Automated video interviews (AVIs) that use machine learning (ML) algorithms to assess interviewees are increasingly popular. Extending prior AVI research focusing on noncognitive constructs, the present study critically evaluates the possibility of assessing cognitive ability with AVIs. By developing and examining AVI ML models trained to predict measures of three cognitive ability constructs (i.e., general mental ability, verbal ability, and intellect as observed at zero acquaintance), this research contributes to the literature in several ways. First, it advances our understanding of how cognitive abilities relate to interviewee behavior. Specifically, we found that verbal behaviors best predicted interviewee cognitive abilities, while neither paraverbal nor nonverbal behaviors provided incremental validity, suggesting that only verbal behaviors should be used to assess cognitive abilities. Second, across two samples of mock video interviews, we extensively evaluated the psychometric properties of the verbal behavior AVI ML model scores, including their
Hickman et al. (Thu,) studied this question.