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Improving risk prediction accuracy for new soldiers in the U.S. Army by adding self-report survey data to administrative data

机译:通过将自我报告调查数据添加到管理数据中来提高美国陆军新兵的风险预测准确性

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摘要

BackgroundHigh rates of mental disorders, suicidality, and interpersonal violence early in the military career have raised interest in implementing preventive interventions with high-risk new enlistees. The Army Study to Assess Risk and Resilience in Servicemembers (STARRS) developed risk-targeting systems for these outcomes based on machine learning methods using administrative data predictors. However, administrative data omit many risk factors, raising the question whether risk targeting could be improved by adding self-report survey data to prediction models. If so, the Army may gain from routinely administering surveys that assess additional risk factors.
机译:背景技术在军事生涯的早期,精神疾患,自杀倾向和人际暴力的高发生率引起了人们对高风险新兵实施预防干预的兴趣。陆军评估服役人员风险和抵御能力的研究(STARRS)基于使用行政数据预测器的机器学习方法,针对这些结果开发了风险目标系统。但是,行政数据忽略了许多风险因素,这引发了一个疑问,即是否可以通过将自我报告调查数据添加到预测模型中来改善风险目标。如果这样,陆军可能会从例行评估其他风险因素的调查中受益。

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