论文标题
COVID-19预测的串行中心注意模型
Inter-Series Attention Model for COVID-19 Forecasting
论文作者
论文摘要
自2020年初以来,Covid-19-19的大流行在全球范围内产生了前所未有的影响。在这场公共卫生危机期间,对疾病的可靠预测对于资源分配和行政计划至关重要。 CDC和新闻媒体通常引用了诸如SIR和SEIR等隔间模型的结果。随着越来越多的COVID-19的数据可用,我们研究了以下问题:直接数据驱动的方法可以在不建模疾病扩散动态的情况下优于良好的隔室模型及其变体吗?在本文中,我们显示了可能性。可以观察到,随着共vid-19在不同地理区域的不同速度和规模扩散,在不同时间段内这些区域之间共享相似的进程模式。这种直觉使我们开发了一种新的神经预测模型,称为注意交叉时间序列(\ textbf {acts}),该模型通过比较从多个区域获得的时间序列的模式进行预测。最初为自然语言处理开发的注意力机制可以被利用并推广,以实现这一想法。在18个测试中的13个测试中,包括预测新确认的病例,住院和死亡,\ textbf {acts}的表现优于CDC突出显示的所有领先的COVID-19预报员。
COVID-19 pandemic has an unprecedented impact all over the world since early 2020. During this public health crisis, reliable forecasting of the disease becomes critical for resource allocation and administrative planning. The results from compartmental models such as SIR and SEIR are popularly referred by CDC and news media. With more and more COVID-19 data becoming available, we examine the following question: Can a direct data-driven approach without modeling the disease spreading dynamics outperform the well referred compartmental models and their variants? In this paper, we show the possibility. It is observed that as COVID-19 spreads at different speed and scale in different geographic regions, it is highly likely that similar progression patterns are shared among these regions within different time periods. This intuition lead us to develop a new neural forecasting model, called Attention Crossing Time Series (\textbf{ACTS}), that makes forecasts via comparing patterns across time series obtained from multiple regions. The attention mechanism originally developed for natural language processing can be leveraged and generalized to materialize this idea. Among 13 out of 18 testings including forecasting newly confirmed cases, hospitalizations and deaths, \textbf{ACTS} outperforms all the leading COVID-19 forecasters highlighted by CDC.