Driver’s Age and Automated Vehicle Explanations
Zhang, Qiaoning; Yang, X. Jessie; Robert, Lionel + "Jr"
2021-02-05
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Citation
Zhang, Q., Yang, X. J. and Robert, L. P. (2021). Driver’s Age and Automated Vehicle Explanations, Sustainability, accepted
Abstract
Automated Vehicles (AV) have the potential to benefit our society. However, a lack of trust is a major barrier to the adoption of AVs. Providing explanations is one approach to facilitating AV trust by decreasing uncertainty about AV's decision-making and action. However, explanations might increase drivers’ cognitive effort and anxiety. Because of differences in cognitive ability across age groups, it is not clear whether explanations are equally beneficial for drivers across age groups in terms of trust, effort, and anxiety. To examine this, we conducted a mixed-design experiment with 40 participants divided into three age groups (i.e., younger, middle-age, and older). Participants were presented with: (1) no explanation, or (2) explanation given before or (3) after the AV took action, or (4) explanation along with a request for permission to take action. Results suggest that the explanations provided before AV take actions produced the highest trust and lowest effort for all drivers regardless of age group. The request-for-permission condition led to the highest trust and lowest effort only for older drivers. Younger drivers had the lowest anxiety and effort under the AV-explanation-after-action condition; however, this condition produced the highest level of anxiety and effort in middle-age and older drivers, respectively. These results have important implications in designing AV explanations and promoting trust.Publisher
Sustainability
Deep Blue DOI
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Subjects
Automated Vehicles explanations Automated Vehicles explanations autonomous vehicle explanations autonomous vehicle autonomous vehicle trust Automated Vehicles trust Human-Machine Interface Artificial Intelligence Artificial Intelligence Transparency Older Drivers Automated Driving Artificial Intelligence Explainability Driver's Age Automation self driving car Explainable Artificial Intelligence Artificial Intelligence trust advance driving automation Advanced Driver Assistance Systems Automated Driving Systems human computer interaction human robot interaction
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Metadata
Show full item recordShowing items related by title, author, creator and subject.
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Azevedo-Sa, Hebert; Yang, Xi Jessie; Robert, Lionel + "Jr"; Tilbury, Dawn (2021 ISTDM, 2021-06-03)
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Robert, Lionel; Bansal, Gaurav; Lütge, Christoph (AIS Transactions on Human-Computer Interaction, 2020-06-30)
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Hughes, Claretha; Robert, Lionel + "Jr"; Frady, Kristin; Arroyos, Adam (Emerald Publishing Limited, 2019-07-23)
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