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Freeway Accident Likelihood Prediction Using a Panel Data Analysis Approach

机译:使用面板数据分析方法的高速公路事故可能性预测

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摘要

The ability to predict freeway accident likelihood promises significant benefits to freeway operations. However, the development of such prediction models has proven to be very challenging because of the random nature of accidents, as well as the impact of site-specific factors. In addition, accident data has a pronounced nature of discrete response—a preponderant portion of nonaccident cases. To address these challenges, this research investigates the use of a discrete response model designed for panel data—the random effects ordered probit model, in predicting freeway accident likelihood. Panel data refers to data sets that combine time series and cross section (i.e., from different individuals, groups, etc.) observations. The empirical results of this research illustrate that the random effects ordered probit model performs well in identifying factors associated with traffic accidents. In addition, when applied in a predictive setting, the model provides benefits in forecasting the likelihood of accidents based on both time-varying and site-specific parameters.
机译:预测高速公路事故可能性的能力有望为高速公路运营带来重大好处。但是,由于事故的随机性以及特定地点因素的影响,开发这种预测模型已证明是非常具有挑战性的。此外,事故数据具有离散响应的显着特征,这是非事故案例的主要部分。为了解决这些挑战,本研究调查了为面板数据设计的离散响应模型(随机效应有序概率模型)在预测高速公路事故可能性中的用途。面板数据是指将时间序列和横截面(即来自不同个人,群体等)的观察结果结合在一起的数据集。该研究的经验结果表明,随机效应有序概率模型在识别与交通事故相关的因素方面表现良好。此外,当在预测性环境中应用时,该模型还可以根据时变参数和特定地点的参数在预测事故可能性方面提供好处。

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