Since the increasing outspread of COVID-19 in the U.S., with the highest number of confirmed cases and deaths in the world as of September 2020, most states in the country have enforced travel restrictions resulting in sharp reductions in mobility. However, the overall impact and long-term implications of this crisis to travel and mobility remain uncertain. To this end, this study develops an analytical framework that determines and analyzes the most dominant factors impacting human mobility and travel in the U.S. during this pandemic. In particular, the study uses Granger causality to determine the important predictors influencing daily vehicle miles traveled and utilize linear regularization algorithms, including Ridge and LASSO techniques, to model and predict mobility. State-level time-series data were obtained from various open-access sources for the period starting from March 1, 2020 through June 13, 2020 and the entire data set was divided into two parts for training and testing purposes. The variables selected by Granger causality were used to train the three different reduced order models by ordinary least square regression, Ridge regression, and LASSO regression algorithms. Finally, the prediction accuracy of the developed models was examined on the test data. The results indicate that the factors including the number of new COVID cases, social distancing index, population staying at home, percent of out of county trips, trips to different destinations, socioeconomic status, percent of people working from home, and statewide closure, among others, were the most important factors influencing daily VMT. Also, among all the modeling techniques, Ridge regression provides the most superior performance with the least error, while LASSO regression also performed better than the ordinary least square model.
翻译:自美国内COVID-19事件越发蔓延以来,截至2020年9月,美国境内大多数州都实施了旅行限制,导致流动性急剧下降;然而,这场危机对旅行和流动的总体影响和长期影响仍然不确定;为此,本研究开发了一个分析框架,确定和分析影响美国这一大流行病期间人类流动和旅行的最主要因素;特别是,这项研究利用 " 重大回归 " 来确定影响每日车辆里程的重要预测器,并利用包括Ridge和LASSO技术在内的线性调整算法来模拟和预测流动性;从2020年3月1日至2020年6月13日期间,从各种开放来源获得的国家一级时间序列数据对旅行和流动和流动的总体影响和长期影响仍然不确定;为此,本研究开发了一个分析框架,用于确定和分析影响美国境内流动和旅行的最主要因素;利用Granger因果关系选择的变量,通过普通最低比率回归、峰值回归和LASSO的回归算法,最后,在测试目的地,所有最低工作模型的预测准确度,包括最高质量技术,在测试期间,从国家内行,也通过其他统计国际旅行,提供不同因素。