作者
Yunteng Lao, Guohui Zhang, Yinhai Wang, John Milton
发表日期
2014/1/31
期刊
Accident Analysis & Prevention
卷号
62
页码范围
9-16
出版商
Pergamon
简介
A generalized nonlinear model (GNM)-based approach for modeling highway rear-end crash risk is formulated using Washington State traffic safety data. Previous studies majorly focused on causal factor identification and crash risk modeling using Generalized linear Models (GLMs), such as Poisson regression, Logistic regression, etc. However, their basic assumption of a generalized linear relationship between the dependent variable (for example, crash rate) and independent variables (for example, contribute factors to crashes) established via a link function can be often violated in reality. Consequently, the GLM-based modeling results could provide biased findings and conclusions. In this research, a GNM-based approach is developed to utilize a nonlinear regression function to better elaborate non-monotonic relationships between the independent and dependent variables using the rear end accident data …
引用总数
2014201520162017201820192020202120222023202441411667612988
学术搜索中的文章
Y Lao, G Zhang, Y Wang, J Milton - Accident Analysis & Prevention, 2014