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Applying the random effect negative binomial model to examine traffic accident occurrence at signalized intersections

机译:应用随机效应负二项式模型检查信号交叉口的交通事故发生

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摘要

Poisson and negative binomial (NB) models have been used to analyze traffic accident occurrence at intersections for several years. There are however, limitations in the use of such models. The Poisson model requires the variance-to-mean ratio of the accident data to be about 1. Both the Poisson and the NB models require the accident data to be uncorrelated in time. Due to unobserved heterogeneity and serial correlation in the accident data, both models seem to be inappropriate. A more suitable alternative is the random effect negative binomial (RENB) model, which by treating the data in a time-series cross-section panel, will be able to deal with the spatial and temporal effects in the data. This paper describes the use of RENB model to identify the elements that affect intersection safety. To establish the suitability of the model, several goodness-of-fit statistics are used. The model is then applied to investigate the relationship between accident occurrence and the geometric, traffic and control characteristics of signalized intersections in Singapore. The results showed that 11 variables significantly affected the safety at the intersections. The total approach volumes, the numbers of phases per cycle, the uncontrolled left-turn lane and the presence of a surveillance camera are among the variables that are the highly significant.
机译:泊松和负二项式(NB)模型已用于分析十字路口的交通事故发生数年。但是,使用此类模型存在局限性。泊松模型要求事故数据的均值比约为1。泊松模型和NB模型都要求事故数据在时间上不相关。由于事故数据中未观察到的异质性和序列相关性,两个模型似乎都是不合适的。一种更合适的替代方法是随机效应负二项式(RENB)模型,该模型通过在时间序列横截面面板中处理数据,将能够处理数据中的时空效应。本文描述了使用RENB模型来识别影响路口安全性的元素。为了建立模型的适用性,使用了几个拟合优度统计数据。然后将该模型用于调查事故发生与新加坡信号交叉口的几何,交通和控制特征之间的关系。结果表明,11个变量显着影响了十字路口的安全性。总进场量,每个周期的相数,不受控制的左转车道和监视摄像机的存在都是非常重要的变量。

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