Building Trust Profiles in Conditionally Automated Driving
Lilit Avetisyan, Jackie Ayoub, X. Jessie Yang, Feng Zhou

TL;DR
This study identifies distinct driver trust profiles in automated vehicles using clustering and predictive modeling, enabling personalized trust calibration to enhance safety and user experience.
Contribution
It introduces a novel approach to classify driver trust profiles in AVs and predicts them accurately for personalized trust management.
Findings
Identified three trust profiles: believers, oscillators, disbelievers.
Achieved a predictive model with 0.90 F1-score and 0.89 accuracy.
Provided insights into how individual factors influence trust dynamics.
Abstract
Trust is crucial for ensuring the safety, security, and widespread adoption of automated vehicles (AVs), and if trust is lacking, drivers and the public may not be willing to use them. This research seeks to investigate trust profiles in order to create personalized experiences for drivers in AVs. This technique helps in better understanding drivers' dynamic trust from a persona's perspective. The study was conducted in a driving simulator where participants were requested to take over control from automated driving in three conditions that included a control condition, a false alarm condition, and a miss condition with eight takeover requests (TORs) in different scenarios. Drivers' dispositional trust, initial learned trust, dynamic trust, personality, and emotions were measured. We identified three trust profiles (i.e., believers, oscillators, and disbelievers) using a K-means…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Cognitive Functions and Memory · Death Anxiety and Social Exclusion
