den Hartigh Ruud J R, Huijzer Rik, Blaauw Frank J, de Wit Age, de Jonge Peter
Department of Psychology, Faculty of Behavioural and Social Sciences, University of Groningen, Grote Kruisstraat 2/1, 9712TS, Groningen, The Netherlands.
Research and Innovation, Researchable BV, Groningen, The Netherlands.
Sci Rep. 2025 Jan 25;15(1):3242. doi: 10.1038/s41598-025-87604-5.
Recruits are exposed to high levels of psychological and physical stress during the special forces selection period, resulting in dropout rates of up to 80%. To identify who likely drops out, we assessed a group of 249 recruits, every week of the selection program, on their self-efficacy, motivation, experienced psychological and physical stress, and recovery. Using linear regression as well as state-of-the-art machine learning techniques, we aimed to build a model that could meaningfully predict dropout while remaining interpretable. Furthermore, we inspected the best-performing model to identify the most important predictors of dropout. Via cross-validation, we found that linear regression had a relatively good predictive performance with an Area Under the Curve of 0.69, and provided interpretable insights. Low levels of self-efficacy and motivation were the significant predictors of dropout. Additionally, we found that dropout could often be predicted multiple weeks in advance. These findings offer novel insights in the use of prediction models on psychological and physical processes, specifically in the context of special forces selection. This offers opportunities for early intervention and support, which may ultimately improve success rates of selection programs.
在特种部队选拔期间,新兵会面临高强度的心理和身体压力,导致高达80%的淘汰率。为了确定哪些人可能会被淘汰,我们在选拔项目的每周对249名新兵进行了评估,内容包括他们的自我效能感、动机、经历的心理和身体压力以及恢复情况。我们使用线性回归以及最先进的机器学习技术,旨在构建一个既能有意义地预测淘汰情况又能保持可解释性的模型。此外,我们检查了表现最佳的模型,以确定淘汰的最重要预测因素。通过交叉验证,我们发现线性回归具有相对较好的预测性能,曲线下面积为0.69,并提供了可解释的见解。自我效能感和动机水平低是淘汰的重要预测因素。此外,我们发现通常可以提前数周预测淘汰情况。这些发现为在心理和身体过程中使用预测模型提供了新的见解,特别是在特种部队选拔的背景下。这为早期干预和支持提供了机会,最终可能提高选拔项目的成功率。