The novel coronavirus disease (COVID-19) has crushed daily routines and is still rampaging through the world. Existing solution for nonpharmaceutical interventions usually needs to timely and precisely select a subset of residential urban areas for containment or even quarantine, where the spatial distribution of confirmed cases has been considered as a key criterion for the subset selection. While such containment measure has successfully stopped or slowed down the spread of COVID-19 in some countries, it is criticized for being inefficient or ineffective, as the statistics of confirmed cases are usually time-delayed and coarse-grained. To tackle the issues, we propose C-Watcher, a novel data-driven framework that aims at screening every neighborhood in a target city and predicting infection risks, prior to the spread of COVID-19 from epicenters to the city. In terms of design, C-Watcher collects large-scale long-term human mobility data from Baidu Maps, then characterizes every residential neighborhood in the city using a set of features based on urban mobility patterns. Furthermore, to transfer the firsthand knowledge (witted in epicenters) to the target city before local outbreaks, we adopt a novel adversarial encoder framework to learn "city-invariant" representations from the mobility-related features for precise early detection of high-risk neighborhoods, even before any confirmed cases known, in the target city. We carried out extensive experiments on C-Watcher using the real-data records in the early stage of COVID-19 outbreaks, where the results demonstrate the efficiency and effectiveness of C-Watcher for early detection of high-risk neighborhoods from a large number of cities.
翻译:新型的冠状病毒(COVID-19)疾病(COVID-19)已经压碎了日常的日常工作,并且仍在全球蔓延。非制药干预的现有解决方案通常需要及时、准确地选择一组城市住宅区进行遏制甚至检疫,而在那里,确认的病例的空间分布被认为是子类选择的关键标准。虽然这种遏制措施成功地阻止或减缓了COVID-19在一些国家的传播,但被批评为效率低下或低效,因为已证实案例的统计数据通常被拖延和粗糙。为了解决问题,我们建议C-观察者(C-Surger),这是一个新的数据驱动框架,目的是在将目标城市的每个街区进行筛查,并预测感染风险。在设计方面,C-Sworder收集了来自Baidu地图的大规模长期人类流动数据,然后用基于城市流动性模式的已知特征来描述该城市的每个住宅区段。此外,为了解决问题,我们建议C-S-19级观察者,这是一个新的数据驱动框架,目的是筛选目标城市每个街区的每个街区的快速数据检测结果,在本地爆发之前,我们采用了一个快速的快速风险测试中,我们采用了一个“在城市进行快速的轨道检测的快速检测的快速城市的快速数据记录,在城市中,在与风险风险中,在城市的早期检测中,我们采用了任何风险风险中,在城市的快速的快速的快速的快速的快速的快速的快速数据。