论文标题
C-Watcher:在Covid-19爆发之前早期发现高风险社区的框架
C-Watcher: A Framework for Early Detection of High-Risk Neighborhoods Ahead of COVID-19 Outbreak
论文作者
论文摘要
新型的冠状病毒病(Covid-19)已经粉碎了日常活动,并且仍在全世界肆虐。现有的非药物干预措施的解决方案通常需要及时,精确地选择居民城市区域的子集以遏制甚至隔离,在这种情况下,已将确认案例的空间分布视为子集选择的关键标准。尽管这种遏制措施已成功停止或减慢了Covid-19在某些国家的传播,但由于通常延迟且详细且粗粒,它因其效率低下或无效而受到批评。为了解决这些问题,我们提出了C-Watcher,这是一个新颖的数据驱动框架,旨在筛查目标城市中的每个社区并预测感染风险,然后在Covid-19从震中传播到城市。在设计方面,C-watcher从百度地图收集大规模的长期人类流动数据,然后使用基于城市流动性模式的一组功能来表征城市中的每个住宅社区。此外,要在当地爆发前将第一手知识(在震中中智慧)转移到目标城市,我们采用了一种新颖的对抗性编码器框架,以从与移动性相关的特征中学习“城市不变”的代表,以便早期发现高风险的社区,即使在目标城市中有任何已知的案例,在目标城市已知,在任何已知的案例之前。我们在Covid-19爆发的早期阶段使用Real-DATA记录对C-观察器进行了广泛的实验,结果表明,C-观察器在早期发现来自许多城市的高风险邻里的效率和有效性。
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.