A novel coronavirus disease has emerged (later named COVID-19) and caused the world to enter a new reality, with many direct and indirect factors influencing it. Some are human-controllable (e.g. interventional policies, mobility and the vaccine); some are not (e.g. the weather). We have sought to test how a change in these human-controllable factors might influence two measures: the number of daily cases against economic impact. If applied at the right level and with up-to-date data to measure, policymakers would be able to make targeted interventions and measure their cost. This study aims to provide a predictive analytics framework to model, predict and simulate COVID-19 propagation and the socio-economic impact of interventions intended to reduce the spread of the disease such as policy and/or vaccine. It allows policymakers, government representatives and business leaders to make better-informed decisions about the potential effect of various interventions with forward-looking views via scenario planning. We have leveraged a recently launched open-source COVID-19 big data platform and used published research to find potentially relevant variables (features) and leveraged in-depth data quality checks and analytics for feature selection and predictions. An advanced machine learning pipeline has been developed armed with a self-evolving model, deployed on a modern machine learning architecture. It has high accuracy for trend prediction (back-tested with r-squared) and is augmented with interpretability for deeper insights.
翻译:新的冠状病毒疾病(后来改名为COVID-19)已经出现,并导致世界进入一个新的现实,有许多直接和间接因素对其产生影响。有些是人类控制的(例如干预政策、流动性和疫苗);有些不是(例如天气);我们试图检验这些人类控制因素的变化如何影响两种措施:对经济影响的日常案例数量;如果在正确的级别上应用并采用最新的数据来衡量,决策者将能够采取有针对性的干预措施并衡量其成本。这项研究的目的是提供一个预测性的直观框架,用以模拟、预测和模拟COVID-19传播以及旨在减少该疾病蔓延的干预措施的社会经济影响,例如政策和/或疫苗。我们试图检验这些人类控制因素的变化如何影响两种措施:通过情景规划对各种具有前瞻性观点的干预措施的潜在影响作出更知情的决定。我们利用了最近推出的公开源COVID-19大数据平台,并使用已公布的研究来寻找潜在的相关变量(相对性)以及模拟COVID-19的传播和模拟传播;以及旨在减少该疾病蔓延的现代数据质量检查和结构的更新。我们利用已部署的高级数据结构来进行深入的精确性预测。