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Calibration of Complex Models through Bayesian Evidence Synthesis: A Demonstration and Tutorial

机译:通过贝叶斯证据综合校准复杂模型:演示和教程

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Decision-analytic models must often be informed using data that are only indirectly related to the main model parameters. The authors outline how to implement a Bayesian synthesis of diverse sources of evidence to calibrate the parameters of a complex model. A graphical model is built to represent how observed data are generated from statistical models with unknown parameters and how those parameters are related to quantities of interest for decision making. This forms the basis of an algorithm to estimate a posterior probability distribution, which represents the updated state of evidence for all unknowns given all data and prior beliefs. This process calibrates the quantities of interest against data and, at the same time, propagates all parameter uncertainties to the results used for decision making. To illustrate these methods, the authors demonstrate how a previously developed Markov model for the progression of human papillomavirus (HPV-16) infection was rebuilt in a Bayesian framework. Transition probabilities between states of disease severity are inferred indirectly from cross-sectional observations of prevalence of HPV-16 and HPV-16-related disease by age, cervical cancer incidence, and other published information. Previously, a discrete collection of plausible scenarios was identified but with no further indication of which of these are more plausible. Instead, the authors derive a Bayesian posterior distribution, in which scenarios are implicitly weighted according to how well they are supported by the data. In particular, we emphasize the appropriate choice of prior distributions and checking and comparison of fitted models.
机译:通常必须使用仅与主要模型参数间接相关的数据来告知决策分析模型。作者概述了如何实施多种证据的贝叶斯综合来校准复杂模型的参数。建立一个图形模型来表示如何从具有未知参数的统计模型中生成观测数据,以及这些参数如何与感兴趣的数量相关联以进行决策。这构成了估计后验概率分布的算法的基础,后验概率分布表示给定所有数据和先验信念的所有未知数的最新证据状态。该过程根据数据校准感兴趣的数量,同时将所有参数不确定性传播到用于决策的结果。为了说明这些方法,作者展示了如何在贝叶斯框架中重建先前开发的用于人类乳头瘤病毒(HPV-16)感染进展的马尔可夫模型。根据年龄,子宫颈癌的发病率和其他已发布的信息,从横断面观察的HPV-16和HPV-16相关疾病的流行率中,间接推断出疾病严重程度之间的转变概率。以前,已经确定了可能的情况的离散集合,但没有进一步表明其中哪种情况更合理。相反,作者得出贝叶斯后验分布,其中根据数据对场景的支持程度对场景进行隐式加权。特别是,我们强调适当选择先验分布以及对拟合模型进行检查和比较。

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