Combining Virtual Reality and Machine Learning for Leadership Styles Recognition

The aim of this study was to evaluate the viability of a new selection procedure based on machine learning (ML) and virtual reality (VR). Specifically, decision-making behaviours and eye-gaze patterns were used to classify individuals based on their leadership styles while immersed in virtual enviro...

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Published inFrontiers in psychology Vol. 13; p. 864266
Main Authors Parra, Elena, García Delgado, Aitana, Carrasco-Ribelles, Lucía Amalia, Chicchi Giglioli, Irene Alice, Marín-Morales, Javier, Giglio, Cristina, Alcañiz Raya, Mariano
Format Journal Article
LanguageEnglish
Published Frontiers Media S.A 31.05.2022
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Summary:The aim of this study was to evaluate the viability of a new selection procedure based on machine learning (ML) and virtual reality (VR). Specifically, decision-making behaviours and eye-gaze patterns were used to classify individuals based on their leadership styles while immersed in virtual environments that represented social workplace situations. The virtual environments were designed using an evidence-centred design approach. Interaction and gaze patterns were recorded in 83 subjects, who were classified as having either high or low leadership style, which was assessed using the Multifactor leadership questionnaire. A ML model that combined behaviour outputs and eye-gaze patterns was developed to predict subjects’ leadership styles (high vs low). The results indicated that the different styles could be differentiated by eye-gaze patterns and behaviours carried out during immersive VR. Eye-tracking measures contributed more significantly to this differentiation than behavioural metrics. Although the results should be taken with caution as the small sample does not allow generalization of the data, this study illustrates the potential for a future research roadmap that combines VR, implicit measures, and ML for personnel selection.
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This article was submitted to Quantitative Psychology and Measurement, a section of the journal Frontiers in Psychology
Edited by: Ioannis Pavlidis, University of Houston, United States
Reviewed by: Dvijesh Shastri, University of Houston System, United States; Yanki Hartijasti, University of Indonesia, Indonesia
ISSN:1664-1078
1664-1078
DOI:10.3389/fpsyg.2022.864266