Using logistic regression to estimate the influence of accident factors on accident severity.

Author(s)
Al-Ghamdi, A.S.
Year
Abstract

Logistic regression was applied to accident-related data collected from traffic police records in order to examine the contribution of several variables to accident severity. A total of 560 subjects involved in serious accidents were sampled. Accident severity (the dependent variable) in this study is a dichotomous variable with two categories, fatal and non-fatal. Therefore, each of the subjects sampled was classified as being in either a fatal or non-fatal accident. Because of the binary nature of this dependent variable, a logistic regression approach was found suitable. Of nine independent variables obtained from police accident reports, two were found most significantly associated with accident severity, namely, location and cause of accident. A statistical interpretation is given of the model-developed estimates in terms of the odds ratio concept. The findings show that logistic regression as used in this research is a promising tool in providing meaningful interpretations that can be used for future safety regression as used in this research a promising tool in providing meaningful interpretations that can be used for future safety improvements in Riyadh. (Author/publisher).

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Publication

Library number
I E114868 /80 / ITRD E114868
Source

Accident Analysis & Prevention. 2002 /11. 34(6) Pp729-41 (17 Refs.)

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