论文标题
COVID19繁殖编号:块近端蒙特卡洛采样器的信誉间隔
Covid19 Reproduction Number: Credibility Intervals by Blockwise Proximal Monte Carlo Samplers
论文作者
论文摘要
监测Covid19大流行是一项关键的社会股份,接受了大量的研究工作。 通过繁殖数量有效地测量了给定领土上大流行的强度,从而量化了每日新感染的生长速度。 最近,使用非平滑功能最小化的反问题制定产生了对繁殖数的时间演变的估计。 虽然它旨在对COVID19数据的有限质量(离群值,缺少计数)具有稳健性,但该过程缺乏输出基于可信度间隔估计值的能力。这仍然是流行病学家在实际大流行监测中实际使用的严重限制,即本工作旨在通过使用蒙特卡洛采样来克服。在将非平滑液功能性的解释为贝叶斯框架之后,对几种采样方案进行了量身定制,以调整所得后验分布的非平滑性质。 设计算法的独创性源于将Langevin Monte Carlo采样方案与近端运算符相结合。 比较了新算法在生成相关的可信度间隔中的繁殖数估计值和deno估计计数时的性能。 评估是对约翰霍普金斯大学提供的实际每日新感染计数进行的。 在来自几个不同国家的COVID19数据上说明了设计的监视工具的兴趣。
Monitoring the Covid19 pandemic constitutes a critical societal stake that received considerable research efforts. The intensity of the pandemic on a given territory is efficiently measured by the reproduction number, quantifying the rate of growth of daily new infections. Recently, estimates for the time evolution of the reproduction number were produced using an inverse problem formulation with a nonsmooth functional minimization. While it was designed to be robust to the limited quality of the Covid19 data (outliers, missing counts), the procedure lacks the ability to output credibility interval based estimates. This remains a severe limitation for practical use in actual pandemic monitoring by epidemiologists that the present work aims to overcome by use of Monte Carlo sampling. After interpretation of the nonsmooth functional into a Bayesian framework, several sampling schemes are tailored to adjust the nonsmooth nature of the resulting posterior distribution. The originality of the devised algorithms stems from combining a Langevin Monte Carlo sampling scheme with Proximal operators. Performance of the new algorithms in producing relevant credibility intervals for the reproduction number estimates and denoised counts are compared. Assessment is conducted on real daily new infection counts made available by the Johns Hopkins University. The interest of the devised monitoring tools are illustrated on Covid19 data from several different countries.