Key Laboratory of Road and Traffic Engineering of Ministry of Education, College of Transportation Engineering, Tongji University, Shanghai, China.
PLoS One. 2018 Nov 21;13(11):e0207810. doi: 10.1371/journal.pone.0207810. eCollection 2018.
In this paper, the accelerated failure time (AFT) model is modified to analyze post-work grocery shopping activity duration. Much previous shopping duration analysis was conducted using the proportional hazard (PH) modeling approach. Once the proportionality assumption was violated, the traditional accelerated failure time (TAFT) model was usually selected as an alternative modeling approach. However, a TAFT model only has covariates with non-proportional and time-dependent effects on the hazard overtime while a PH model only accommodates covariates with proportional and time-independent effects. Neither of them considers the possibility that some of covariates may have proportional and time-independent effects and some may have non-proportional and time-dependent effects on the hazard value in one model. To address this issue, the paper generalizes the TAFT model and develops a modified accelerated failure time (MAFT) model to accommodate both time-dependent and time-independent covariates for activity duration analysis. Checking on the proportionality assumption indicates that the assumption is not valid in the post-work grocery shopping activity data extracted from the 2017 National Household Travel Survey (NHTS) conducted by the U.S. Department of Transportation (USDOT). Both TAFT and MAFT models are developed for comparisons and analysis. The empirical and statistical results show that there do exist two different types of covariates affecting shopping activity duration, including covariates only with proportional and time-independent effects (i.e. working duration, commute travel time) and those with non-proportional and time-dependent effects. The MAFT model can capture the subtleties in various types of covariate effects and help better understand how those covariates affect activity duration overtime. This paper also shows the importance to develop a flexible duration model with both time-dependent and time-independent covariates for accurately evaluating travel demand management (TDM) policies, like flexible work hours.
在本文中,对加速失效时间(AFT)模型进行了修改,以分析工作后杂货店购物活动的持续时间。在此之前,许多购物持续时间分析都是使用比例风险(PH)建模方法进行的。一旦违反了比例性假设,通常会选择传统的加速失效时间(TAFT)模型作为替代建模方法。然而,TAFT 模型仅具有对随时间变化的风险具有非比例和时变影响的协变量,而 PH 模型仅适用于对随时间变化的风险具有比例和时不变影响的协变量。它们都没有考虑到这样一种可能性,即某些协变量可能对危险值具有比例和时不变的影响,而某些协变量可能对危险值具有非比例和时变的影响。为了解决这个问题,本文推广了 TAFT 模型,并开发了改进的加速失效时间(MAFT)模型,以适应活动持续时间分析中具有时变和时不变影响的协变量。对比例性假设的检验表明,该假设在从美国交通部(USDOT)进行的 2017 年国家家庭出行调查(NHTS)中提取的工作后杂货店购物活动数据中不成立。本文为比较和分析分别开发了 TAFT 和 MAFT 模型。实证和统计结果表明,确实存在两种不同类型的协变量会影响购物活动的持续时间,包括仅具有比例和时不变影响的协变量(即工作时间、通勤旅行时间)和具有非比例和时变影响的协变量。MAFT 模型可以捕捉到各种类型协变量效应的细微差别,并有助于更好地理解这些协变量如何随时间变化影响活动持续时间。本文还表明,为了准确评估灵活工作时间等交通需求管理(TDM)政策,开发具有时变和时不变协变量的灵活持续时间模型非常重要。