Socially Adaptive Autonomous Vehicles: Effects of Contingent Driving Behavior on Drivers' Experiences
September 21, 2025 Β· Declared Dead Β· π International Conference on Automotive User Interfaces and Interactive Vehicular Applications
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Authors
Chishang Yang, Xiang Chang, Debargha Dey, Avi Parush, Wendy Ju
arXiv ID
2509.17264
Category
cs.HC: Human-Computer Interaction
Citations
1
Venue
International Conference on Automotive User Interfaces and Interactive Vehicular Applications
Last Checked
4 months ago
Abstract
Social scientists have argued that autonomous vehicles (AVs) need to act as effective social agents; they have to respond implicitly to other drivers' behaviors as human drivers would. In this paper, we investigate how contingent driving behavior in AVs influences human drivers' experiences. We compared three algorithmic driving models: one trained on human driving data that responds to interactions (a familiar contingent behavior) and two artificial models that intend to either always-yield or never-yield regardless of how the interaction unfolds (non-contingent behaviors). Results show a statistically significant relationship between familiar contingent behavior and positive driver experiences, reducing stress while promoting the decisive interactions that mitigate driver hesitance. The direct relationship between familiar contingency and positive experience indicates that AVs should incorporate socially familiar driving patterns through contextually-adaptive algorithms to improve the chances of successful deployment and acceptance in mixed human-AV traffic environments.
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