齿对尾的影响分析:结合计量经济模型和贝叶斯网络来评估由于力量结构变化造成的支持成本后果

Bradley C. Boehmke, Alan W. Johnson, E. White, J. Weir, Mark A. Gallagher
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引用次数: 4

摘要

目前财政环境的限制迫使空军及其姊妹军种评估削减兵力的考虑。随着部队的大量减少,需要对这些变化可能对支助资源产生的潜在影响进行建模和评估。以前的研究仍然主要集中在将空军成本谱的齿端和尾端连接起来的比率方法上,尽管最近的研究通过提供齿端到尾关系背后的更严格的统计数据来增强这一文献流,但尚未探索适当的决策支持工具来帮助决策者。本研究的作者通过引入一种系统的方法来执行从头到尾的政策影响分析,直接解决了这一问题。首先,应用多元线性回归识别齿尾之间的关系。然后,引入了一种具有贝叶斯网络的新型决策支持系统来模拟从牙齿到尾巴的成本后果,同时捕获通常伴随此类政策考虑而来的不确定性。通过情景分析,作者说明了贝叶斯网络如何为决策者提供(i)建模决策环境中的不确定性的能力,(ii)因果影响的可视化说明,以及(iii)根据决策者可获得的新信息执行多向推理的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tooth-to-Tail Impact Analysis: Combining Econometric Modeling and Bayesian Networks to Assess Support Cost Consequences Due to Changes in Force Structure
Current constraints in the fiscal environment are forcing the Air Force, and its sister services, to assess force reduction considerations. With significant force reduction comes the need to model and assess the potential impact that these changes may have on support resources. Previous research has remained heavily focused on a ratio approach for linking the tooth and tail ends of the Air Force cost spectrum and, although recent research has augmented this literature stream by providing more statistical rigor behind tooth-to-tail relationships, an adequate decision support tool has yet to be explored to aid decision-makers. The authors of this research directly address this concern by introducing a systematic approach to perform tooth-to-tail policy impact analysis. First, multivariate linear regression is applied to identify relationships between the tooth and tail. Then, a novel decision support system with Bayesian networks is introduced to model the tooth-to-tail cost consequences while capturing the uncertainty that often comes with such policy considerations. Through scenario analysis, the authors illustrate how a Bayesian network can provide decision-makers with (i) the ability to model uncertainty in the decision environment, (ii) a visual illustration of cause-and-effect impacts, and (iii) the ability to perform multi-directional reasoning in light of new information available to decision-makers.
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