Literature DB >> 24841002

Multivariate random-parameters zero-inflated negative binomial regression model: an application to estimate crash frequencies at intersections.

Chunjiao Dong1, David B Clarke2, Xuedong Yan3, Asad Khattak4, Baoshan Huang4.   

Abstract

Crash data are collected through police reports and integrated with road inventory data for further analysis. Integrated police reports and inventory data yield correlated multivariate data for roadway entities (e.g., segments or intersections). Analysis of such data reveals important relationships that can help focus on high-risk situations and coming up with safety countermeasures. To understand relationships between crash frequencies and associated variables, while taking full advantage of the available data, multivariate random-parameters models are appropriate since they can simultaneously consider the correlation among the specific crash types and account for unobserved heterogeneity. However, a key issue that arises with correlated multivariate data is the number of crash-free samples increases, as crash counts have many categories. In this paper, we describe a multivariate random-parameters zero-inflated negative binomial (MRZINB) regression model for jointly modeling crash counts. The full Bayesian method is employed to estimate the model parameters. Crash frequencies at urban signalized intersections in Tennessee are analyzed. The paper investigates the performance of MZINB and MRZINB regression models in establishing the relationship between crash frequencies, pavement conditions, traffic factors, and geometric design features of roadway intersections. Compared to the MZINB model, the MRZINB model identifies additional statistically significant factors and provides better goodness of fit in developing the relationships. The empirical results show that MRZINB model possesses most of the desirable statistical properties in terms of its ability to accommodate unobserved heterogeneity and excess zero counts in correlated data. Notably, in the random-parameters MZINB model, the estimated parameters vary significantly across intersections for different crash types.
Copyright © 2014 Elsevier Ltd. All rights reserved.

Keywords:  Crash frequency; Full Bayesian method; Geometric design; MRZINB model

Mesh:

Year:  2014        PMID: 24841002     DOI: 10.1016/j.aap.2014.04.018

Source DB:  PubMed          Journal:  Accid Anal Prev        ISSN: 0001-4575


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