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Title: A Generalized Event Count Model for Crash Data Analysis
Accession Number: 01552863
Record Type: Component
Availability: Transportation Research Board Business Office 500 Fifth Street, NW Abstract: The investigation of relationships between traffic accidents and relevant factors is important in traffic safety management. Various methods have been developed for the modeling of crash data. In real world scenarios, crash data often display the characteristics of under-, over- or Poisson dispersion. The commonly used models (such as the Poisson and the NB [negative binomial] regression models) have associated limitations to deal with various degrees of dispersion. In light of this, a generalized event count (GEC) model was proposed in this study. This method can be generally used without considering the degrees of dispersion to simplify the process of crash data analysis. This model was applied to case studies using data from highways in Idaho. The results from the GEC model were compared with those from the Poisson regression and the Negative binomial regression models. The cases studies show that the proposed model has good performance for crash data with various degrees of dispersion.
Supplemental Notes: This paper was sponsored by TRB committee ABJ80 Statistical Methods.
Monograph Title: Monograph Accession #: 01550057
Report/Paper Numbers: 15-1326
Language: English
Corporate Authors: Transportation Research Board 500 Fifth Street, NW Authors: Ye, ZhiruiXu, YueruPagination: 15p
Publication Date: 2015
Conference:
Transportation Research Board 94th Annual Meeting
Location:
Washington DC, United States Media Type: Digital/other
Features: Figures; References; Tables
TRT Terms: Geographic Terms: Subject Areas: Data and Information Technology; Highways; I72: Traffic and Transport Planning
Source Data: Transportation Research Board Annual Meeting 2015 Paper #15-1326
Files: TRIS, TRB, ATRI
Created Date: Dec 30 2014 12:31PM
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