In this paper, we develop an approach of global sensitivity analysis for compartmental models based on continuous-time Markov chains. We propose to measure the sensitivity of quantities of interest by representing the Markov chain as a deterministic function of the uncertain parameters and a random variable with known distribution modeling intrinsic randomness. This representation is exact and does not rely on meta-modeling. An application to a SARS-CoV-2 epidemic model is included to illustrate the practical impact of our approach.
翻译:在本文中,我们为基于持续时间的Markov链条的区际模型制定了一种全球敏感性分析方法,我们提议通过将Markov链条作为不确定参数的决定性功能和已知分布模型内在随机性的随机变量来衡量利息的敏感度,这一分析方法准确无误,不依赖元模型,包括了对SARS-CoV-2流行病模型的应用,以说明我们方法的实际影响。