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Capturing the behavioural determinants behind the adoption of autonomous vehicles: Conceptual frameworks and measurement models to predict public transport, sharing and ownership trends of self-driving cars

机译:捕捉采用自动驾驶的行为决定因素:预测公共交通,自动驾驶汽车的共享和所有权趋势的概念框架和度量模型

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Autonomous Vehicles (AVs) have the potential to make motorized transport safer and more sustainable, by integrating clean technologies and supporting flexible shared-mobility services. Leveraging this new form of transport to transform mobility in cities will depend fundamentally on public acceptance of AVs, and the ways in which individuals choose to use them, to meet their daily travel needs. Empirical studies exploring public attitudes towards automated driving technologies and interest in AVs have emerged in the last few years. However, within this strand of research there is a paucity of theory-driven and behaviourally consistent methodologies to unpack the determinants of user adoption decisions with respect to AVs. In this paper, we seek to fill this gap, by advancing and testing four conceptual frameworks which could be deployed to capture the range of possible behavioural influences on individuals' AV adoption decisions. The frameworks integrate socio-demographic variables and relevant latent behavioural factors, including perceived benefits and perceived ease of use of AVs, public fears and anxieties regarding AVs, subjective norm, perceived behavioural control, and attitudinal factors covering the environment, technology, collaborative consumption, public transit and car ownership. We demonstrate the utility and validity of the frameworks, by translating the latent variables into indicator items in a structured questionnaire, and administering it online to a random sample of adult individuals (n = 507). Using the survey data in confirmatory factor analyses, we specify and demonstrate scale reliability of indicator items, and convergent and discriminant validity of relationships among latent variables. Ultimately, we advance four measurement models. These theory-grounded measurement models are intended for application in research aimed at understanding and predicting (a) AV interest and adoption intentions, and (b) user adoption decisions regarding three different AV modes: ownership, sharing and public transport. (C) 2019 Elsevier Ltd. All rights reserved.
机译:无人驾驶汽车(AV)通过整合清洁技术并支持灵活的共享出行服务,有可能使机动交通更加安全和可持续。利用这种新的交通方式来改变城市的机动性,从根本上将取决于公众对自动驾驶汽车的接受程度,以及个人选择使用自动驾驶汽车以满足其日常旅行需求的方式。在过去的几年中,进行了关于大众对自动驾驶技术的看法和对自动驾驶汽车的兴趣的探索性研究。然而,在这一系列研究中,缺乏理论驱动和行为上一致的方法来解开关于AV的用户采用决策的决定因素。在本文中,我们试图通过推进和测试四个概念框架来填补这一空白,这些框架可以用来捕获对个人视听采用决策可能的行为影响的范围。该框架整合了社会人口学变量和相关的潜在行为因素,包括感知到的影音收益和易用性,公众对影音的恐惧和焦虑,主观规范,感知的行为控制以及涵盖环境,技术,合作消费的态度因素,公共交通和汽车拥有权。通过将潜在变量转换为结构化问卷中的指标项,并将其在线管理给成年个体的随机样本(n = 507),我们证明了框架的实用性和有效性。使用调查数据进行验证性因素分析,我们指定并证明指标项的规模可靠性,以及潜在变量之间关系的收敛性和判别有效性。最终,我们提出了四种测量模型。这些基于理论的测量模型旨在用于旨在理解和预测(a)AV兴趣和采用意图,以及(b)关于三种不同AV模式的用户采用决策:所有权,共享和公共交通的研究中。 (C)2019 Elsevier Ltd.保留所有权利。

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