基于结构方程模型的驾驶行为研究与因素评估的元分析

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引用次数: 0

摘要

本文旨在通过研究已发表的利用计划行为理论(TPB)预测驾驶行为的研究,了解影响不安全驾驶行为的因素。为此,本文回顾了截至 2021 年底发表的 42 项研究,通过荟萃分析和结构方程模型评估了计划行为理论的预测效用。结果表明,这些研究试图利用原始的 TPB 构建和 43 个附加变量来预测 20 种不同的驾驶行为(如酒后驾驶、驾驶时使用手机、攻击性驾驶)。研究发现,包含三个原始结构的 TPB 模型可解释 32% 的意向变异和 34% 的行为变异。在与驾驶行为相关的 TPB 研究中,研究人员对 43 个变量进行了研究,本研究确定了常用来增强 TPB 模型预测能力的六个变量。这些变量分别是过去行为、自我认同、描述性规范、预期后悔、风险认知和道德规范。当把过去的行为添加到原始的 TPB 模型中时,意向的解释方差增加到 52%。当把所有六个因素都添加到原来的 TPB 模型中时,最佳模型只有四个变量(感知风险、自我认同、描述性规范和道德规范);解释方差增加到 48%。TPB 构建因素对意向的影响因行为类别和交通类别的不同而有所变化。本文的研究结果验证了 TPB 在驾驶行为预测中的应用。这是第一项通过使用荟萃分析和结构方程模型来实现这一目的的研究。
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Meta-analysis of driving behavior studies and assessment of factors using structural equation modeling

The aim of this paper is to understand the factors that influence unsafe driving practices by examining published studies that utilized the theory of planned behavior (TPB) to predict driving behavior. To this end, 42 studies published up to the end of 2021 are reviewed to evaluate the predictive utility of TPB by employing a meta-analysis and structural equation model. The results indicate that these studies sought to predict 20 distinct driving behaviors (e.g., drink-driving, use of cellphone while driving, aggressive driving) using the original TPB constructs and 43 additional variables. The TPB model with the three original constructs is found to account for 32% intentional variance and 34% behavioral variance. Among the 43 variables researchers have examined in TPB studies related to driving behavior, this study identified the six that are commonly used to enhance the TPB model’s predictive power. These variables are past behavior, self-identity, descriptive norm, anticipated regret, risk perception, and moral norm. When past behavior is added to the original TPB model, it increases the explained variance in intention to 52%. When all six factors are added to the original TPB model, the best model has only four variables (perceived risk, self-identity, descriptive norm, and moral norm); and increases the explained variance to 48%. The influence of the TPB constructs on intention is modified by behavior category and traffic category. The findings of this paper validate the application of TPB to predicting driving behavior. It is the first study to do this through the use of meta-analysis and structural equation modeling.

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来源期刊
International Journal of Transportation Science and Technology
International Journal of Transportation Science and Technology Engineering-Civil and Structural Engineering
CiteScore
7.20
自引率
0.00%
发文量
105
审稿时长
88 days
期刊最新文献
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