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首页> 外文期刊>Journal of Transportation Technologies >How to Detect and Remove Temporal Autocorrelation in Vehicular Crash Data
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How to Detect and Remove Temporal Autocorrelation in Vehicular Crash Data

机译:如何在车辆崩溃数据中检测和删除时间自相关

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Temporal autocorrelation (also called serial correlation) refers to the relationship between successive values (i.e. lags) of the same variable. Although it has long been a major concern in time series models, however, in-depth treatments of temporal autocorrelation in modeling vehicle crash data are lacking. This paper presents several test statistics to detect the amount of temporal autocorrelation and its level of significance in crash data. The tests employed are: 1) the Durbin-Watson (DW); 2) the Breusch-Godfrey (LM); and 3) the Ljung-Box Q (LBQ). When temporal autocorrelation is statistically significant in crash data, it could adversely bias the parameter estimates. As such, if present, temporal autocorrelation should be removed prior to use the data in crash modeling. Two procedures are presented in this paper to remove the temporal autocorrelation: 1) Differencing; and 2) the Cochrane-Orcutt method.
机译:时间自相关(也称为串行相关)是指同一变量的连续值(即滞后)之间的关系。虽然它长期以来一直是时间序列模型的主要问题,但是,缺乏在建模车辆碰撞数据中进行时间自相关的深入治疗。本文介绍了几种测试统计数据,以检测时间自相关的量及其在崩溃数据中的重要性水平。所雇用的测试是:1)Durbin-Watson(DW); 2)Breusch-Godfrey(LM); 3)Ljung-Box Q(LBQ)。当时间自相关在崩溃数据中具有统计学意义时,它可能对参数估计产生不利影响。因此,如果存在,则应在使用崩溃建模中的数据之前删除时间自相关。本文提出了两种程序,以消除时间自相关:1)差异; 2)Cochrane-Orcutt方法。

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