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Predicting intentions to comply with speed limits using a 'decision tree' applied to an extended version of the theory of planned behaviour

机译:预测使用“决策树”遵守速度限制的意图应用于计划行为理论的扩展版本

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摘要

Speed is a major cause of road traffic accidents and deaths. Public authorities address this issue by reducing speed limits, for example by extending the 30 km/h speed limit throughout the urban area. This research is linked to the traffic-calming project in Angers (France). It is based on the Theory of Planned Behaviour (TPB) and the prediction of young drivers' intentions to comply with speed limits. We tested a modified version of the TPB that includes variables related to beliefs and other variables taken from the Self-Report Habit Index (SRHI). Participants (n = 391, Mean Age = 22.4, SD = 3.8) completed a questionnaire including measures of the TPB components related to intentions to comply with the 30 km/h speed limit. Bayesian analysis confirmed the relevance of this model, which explained 53% of the variance of behavioural intention. By projecting these results on a decision tree, we were able to identify the most influential variables for predicting intentions. The interest of this decision tree is that it makes it possible to compare self-reported intentions and expected outcomes. The study provides support for politicians, researchers and communications officers who are responsible for implementing speed limit measures. (C) 2019 Elsevier Ltd. All rights reserved.
机译:速度是道路交通事故和死亡的主要原因。公共当局通过减少速度限制来解决这个问题,例如通过在整个城市地区延长30 km / h速度限制。该研究与昂热(法国)的交通镇定项目有关。它基于计划行为(TPB)的理论,并预测年轻司机的意图符合速度限制。我们测试了TPB的修改版本,包括与信仰相关的变量和从自我报告习惯索引(SRHI)中获取的其他变量。参与者(n = 391,平均年龄= 22.4,SD = 3.8)完成了调查问卷,包括与意图相关的TPB组件的措施,以符合30 km / h速度限制。贝叶斯分析证实了该模型的相关性,这解释了行为意图方差的53%。通过将这些结果投影在决策树上,我们能够识别预测意图的最有影响力的变量。这个决定树的兴趣是它可以比较自我报告的意图和预期的结果。该研究为负责实施速度限制措施的政客,研究人员和传播官员提供支持。 (c)2019 Elsevier Ltd.保留所有权利。

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