To mitigate the spread of COVID-19 pandemic, decision-makers and public authorities have announced various non-pharmaceutical policies. Analyzing the causal impact of these policies in reducing the spread of COVID-19 is important for future policy-making. The main challenge here is the existence of unobserved confounders (e.g., vigilance of residents). Besides, as the confounders may be time-varying during COVID-19 (e.g., vigilance of residents changes in the course of the pandemic), it is even more difficult to capture them. In this paper, we study the problem of assessing the causal effects of different COVID-19 related policies on the outbreak dynamics in different counties at any given time period. To this end, we integrate data about different COVID-19 related policies (treatment) and outbreak dynamics (outcome) for different United States counties over time and analyze them with respect to variables that can infer the confounders, including the covariates of different counties, their relational information and historical information. Based on these data, we develop a neural network based causal effect estimation framework which leverages above information in observational data and learns the representations of time-varying (unobserved) confounders. In this way, it enables us to quantify the causal impact of policies at different granularities, ranging from a category of policies with a certain goal to a specific policy type in this category. Besides, experimental results also indicate the effectiveness of our proposed framework in capturing the confounders for quantifying the causal impact of different policies. More specifically, compared with several baseline methods, our framework captures the outbreak dynamics more accurately, and our assessment of policies is more consistent with existing epidemiological studies of COVID-19.
翻译:为了减缓COVID-19流行病的蔓延,决策者和公共当局宣布了各种非药物政策,分析这些政策在减少COVID-19扩散方面的因果影响对未来决策很重要,主要挑战在于是否存在未观察到的困惑者(例如居民的警惕性),此外,由于CVID-19期间的困惑者可能是时间变化的,因此更难以捕捉这些政策。在本文件中,我们研究了评估不同COVID-19相关政策在减少COVID-19扩散方面的因果影响的问题,在任何特定时期对减少COVID-19的因果影响至关重要。为此,我们综合了美国不同州不同的COVID-19相关政策(例如居民的警惕性)和爆发动态的数据。此外,在COVID-19-19-19期间,人们可能具有时间变化性(例如居民在大流行病过程中的警惕性变化),因此更难于捕捉到它们。根据这些数据,我们开发了一个基于因果效应的网络,对不同州内爆发动态的不同政策进行因果影响进行评估,从而更能利用我们目前各种指标的分类数据和结果的量化数据。