交通数据分析的统计和计量经济学方法

B. Sloboda
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引用次数: 73

摘要

您将获得5年期间(1995年至1999年)印第安纳州337个农村州际公路路段的交通事故数据。在高速公路安全中,使用每车辆行驶里程的事故数具有直观的吸引力——它提供了一种相对安全路段的标准化衡量标准,比每一段时间内的事故数量更容易解释。由于特定路段的事故率是在一段有限的时间内评估的,因此有可能在分析期间许多路段没有事故报告。因此,通过标准OLS建模事故率将导致有偏差和不一致的参数估计。解决这个问题的方法是将事故率视为一个被删减的因变量(在零处删减),并应用tobit模型。对于考虑的事故率,数据将被左审查,聚类为零(每1亿车辆行驶里程零事故),因为在观察期间可能不会在所有路段观察到事故。对于模型估计,事故率(每百万VMT的事故数)计算为:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical and Econometric Methods for Transportation Data Analysis
You are given vehicle accident data from 337 rural interstate road sections in the state of Indiana for a 5-year period (1995 to 1999). The use of accidents per vehiclemiles traveled has an intuitive appeal in highway safety – providing a standardized measure of the relative safety of roadway segments that is more easily interpreted than the number of accidents per some time period. Because accident rates on specific highway segments are assessed over some finite time period, there is the likelihood that many highway segments will have no accidents reported during the analysis period. Thus, modeling accident rates by standard OLS would result in biased and inconsistent parameter estimates. The solution to this is to consider accident rates as a censored dependent variable (censored at zero) and apply a tobit model. For the accident-rate considered, the data will be left-censored with a clustering at zero (zero accidents per 100-million vehicle miles traveled) because accidents may not be observed on all roadway segments during the period of observation. For model estimation, the accident rate (number of accidents per 100-million VMT) was calculated as:
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