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应用广义华林模型研究机动车碰撞分析中的方差来源。

Applying the Generalized Waring model for investigating sources of variance in motor vehicle crash analysis.

作者信息

Peng Yichuan, Lord Dominique, Zou Yajie

机构信息

Department of Civil Engineering, University of Central Florida, 4000 Central Florida Blvd, Orlando, FL 32816, United States.

Zachry Development, Texas A&M University, 3136 TAMU, College Station, TX 77843-3136, United States.

出版信息

Accid Anal Prev. 2014 Dec;73:20-6. doi: 10.1016/j.aap.2014.07.031. Epub 2014 Aug 28.

Abstract

As one of the major analysis methods, statistical models play an important role in traffic safety analysis. They can be used for a wide variety of purposes, including establishing relationships between variables and understanding the characteristics of a system. The purpose of this paper is to document a new type of model that can help with the latter. This model is based on the Generalized Waring (GW) distribution. The GW model yields more information about the sources of the variance observed in datasets than other traditional models, such as the negative binomial (NB) model. In this regards, the GW model can separate the observed variability into three parts: (1) the randomness, which explains the model's uncertainty; (2) the proneness, which refers to the internal differences between entities or observations; and (3) the liability, which is defined as the variance caused by other external factors that are difficult to be identified and have not been included as explanatory variables in the model. The study analyses were accomplished using two observed datasets to explore potential sources of variation. The results show that the GW model can provide meaningful information about sources of variance in crash data and also performs better than the NB model.

摘要

作为主要分析方法之一,统计模型在交通安全分析中发挥着重要作用。它们可用于多种目的,包括建立变量之间的关系以及了解系统的特征。本文的目的是记录一种新型模型,该模型有助于实现后者。此模型基于广义华林(GW)分布。与其他传统模型(如负二项式(NB)模型)相比,GW模型能提供更多关于数据集中观察到的方差来源的信息。在这方面,GW模型可将观察到的变异性分为三个部分:(1)随机性,它解释了模型的不确定性;(2)易发性,指实体或观测值之间的内部差异;(3)易患性,定义为由其他难以识别且未作为解释变量纳入模型的外部因素引起的方差。研究分析使用两个观测数据集来探索潜在的变异来源。结果表明,GW模型能够提供有关碰撞数据中方差来源的有意义信息,并且其表现也优于NB模型。

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