This paper analyzes the impact of COVID-19 related lockdowns in the Atlanta, Georgia metropolitan area by examining commuter patterns in three periods: prior to, during, and after the pandemic lockdown. A cellular phone location dataset is utilized in a novel pipeline to infer the home and work locations of thousands of users from the Density-based Spatial Clustering of Applications with Noise (DBSCAN) algorithm. The coordinates derived from the clustering are put through a reverse geocoding process from which word embeddings are extracted in order to categorize the industry of each work place based on the workplace name and Point of Interest (POI) mapping. Frequencies of commute from home locations to work locations are analyzed in and across all three time periods. Public health and economic factors are discussed to explain potential reasons for the observed changes in commuter patterns.
翻译:本文分析佐治亚州亚特兰大大都市地区COVID-19相关封闭的影响,在三段时期内检查通勤模式:大流行封闭之前、期间和之后;在一条新型管道中使用移动电话定位数据集,以推断有噪音(DBSCAN)算法的基于密度的空间应用空间集群(DBSCAN)的数千名用户的家和工作地点;通过一个反向地理编码进程,从中提取词嵌入词,以便根据工作场所名称和利益点(POI)绘图对每个工作场所的行业进行分类;对所有三个时期内从家住地点到工作地点的通勤情况进行分析;讨论公共卫生和经济因素,以解释观察到的通勤模式变化的潜在原因。</s>