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Computing Expected Value of Partial Sample Information from Probabilistic Sensitivity Analysis Using Linear Regression Metamodeling

机译:使用线性回归元模型从概率敏感性分析计算部分样本信息的期望值

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摘要

Decision makers often desire both guidance on the most cost-effective interventions given current knowledge and also the value of collecting additional information to improve the decisions made [i.e., from value of information (VOI) analysis]. Unfortunately, VOI analysis remains underutilized due to the conceptual, mathematical and computational challenges of implementing Bayesian decision theoretic approaches in models of sufficient complexity for real-world decision making. In this study, we propose a novel practical approach for conducting VOI analysis using a combination of probabilistic sensitivity analysis, linear regression metamodeling, and unit normal loss integral function – a parametric approach to VOI analysis. We adopt a linear approximation and leverage a fundamental assumption of VOI analysis which requires that all sources of prior uncertainties be accurately specified. We provide examples of the approach and show that the assumptions we make do not induce substantial bias but greatly reduce the computational time needed to perform VOI analysis. Our approach avoids the need to analytically solve or approximate joint Bayesian updating, requires only one set of probabilistic sensitivity analysis simulations, and can be applied in models with correlated input parameters.
机译:决策者通常既希望在给定当前知识的情况下就最具有成本效益的干预措施提供指导,也希望获得收集更多信息以改善决策的价值[即,从信息价值(VOI)分析中]。不幸的是,由于在对现实世界决策具有足够复杂性的模型中实施贝叶斯决策理论方法的概念,数学和计算方面的挑战,VOI分析仍未得到充分利用。在这项研究中,我们提出了一种新的实用方法,可通过概率敏感性分析,线性回归元模型和单位正态损失积分函数的组合进行VOI分析-一种用于VOI分析的参数方法。我们采用线性近似并利用VOI分析的基本假设,该假设要求准确指定所有先前不确定性的来源。我们提供了该方法的示例,并表明我们所做的假设不会引起明显的偏差,但是会大大减少执行VOI分析所需的计算时间。我们的方法避免了需要解析求解或近似联合贝叶斯更新的需要,只需要一组概率敏感性分析仿真,并且可以在具有相关输入参数的模型中应用。

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