Al-Ghamdi Ali S
College of Engineering, King Saud University, Riyadh, Saudi Arabia.
Accid Anal Prev. 2002 Nov;34(6):729-41. doi: 10.1016/s0001-4575(01)00073-2.
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 improvements in Riyadh.
为了检验几个变量对事故严重程度的影响,对从交警记录中收集的事故相关数据进行了逻辑回归分析。总共抽取了560名涉及严重事故的受试者。本研究中的事故严重程度(因变量)是一个二分变量,分为致命和非致命两类。因此,每个抽样的受试者被归类为发生致命事故或非致命事故。由于这个因变量的二元性质,发现逻辑回归方法是合适的。从警方事故报告中获得的九个自变量中,有两个与事故严重程度最显著相关,即事故地点和事故原因。根据优势比概念对模型开发的估计进行了统计解释。研究结果表明,本研究中使用的逻辑回归是一种很有前景的工具,能够提供有意义的解释,可用于利雅得未来的安全改进。