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A Markov chain model of military personnel dynamics

机译:军事人员动力学的马尔可夫链模型

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Personnel retention is one of the most significant challenges faced by the US Army. Central to the problem is understanding the incentives of the stay-or-leave decision for military personnel. Using three years of data from the US Department of Defense, we construct and estimate a Markov chain model of military personnel. Unlike traditional classification approaches, such as logistic regression models, the Markov chain model allows us to describe military personnel dynamics over time and answer a number of managerially relevant questions. Building on the Markov chain model, we construct a finite-horizon stochastic dynamic programming model to study the monetary incentives of stay-or-leave decisions. The dynamic programming model computes the expected pay-off of staying versus leaving at different stages of the career of military personnel, depending on employment opportunities in the civilian sector. We show that the stay-or-leave decisions from the dynamic programming model possess surprisingly strong predictive power, without requiring personal characteristics that are typically employed in classification approaches. Furthermore, the results of the dynamic programming model can be used as an input in classification methods and lead to more accurate predictions. Overall, our work presents an interesting alternative to classification methods and paves the way for further investigations on personnel retention incentives.
机译:人员保留是美国陆军面临的最重大挑战之一。问题的核心是了解军事人员留下或留下的决定的动机。利用美国国防部的三年数据,我们构建并估算了军事人员的马尔可夫链模型。与传统的分类方法(例如逻辑回归模型)不同,马尔可夫链模型允许我们描述随时间推移的军事人员动态,并回答许多与管理相关的问题。在马尔可夫链模型的基础上,我们构建了一个有限水平随机动态规划模型来研究留守或离职决策的货币激励。动态规划模型根据军事部门的就业机会,计算在军事人员职业生涯的不同阶段停留和离开的预期收益。我们显示,动态规划模型的保留或保留决策具有令人惊讶的强大预测能力,而无需分类方法中通常采用的个人特征。此外,动态规划模型的结果可以用作分类方法的输入,并导致更准确的预测。总体而言,我们的工作提出了一种有趣的替代分类方法,并为进一步研究人员保留激励措施铺平了道路。

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