
@article{ref1,
title="Multitasking in driving as optimal adaptation under uncertainty",
journal="Human factors",
year="2020",
author="Jokinen, Jussi P. P. and Kujala, Tuomo and Oulasvirta, Antti",
volume="ePub",
number="ePub",
pages="ePub-ePub",
abstract="OBJECTIVE: The objective was to better understand how people adapt multitasking behavior when circumstances in driving change and how safe versus unsafe behaviors emerge.   BACKGROUND: Multitasking strategies in driving adapt to changes in the task environment, but the cognitive mechanisms of this adaptation are not well known. Missing is a unifying account to explain the joint contribution of task constraints, goals, cognitive capabilities, and beliefs about the driving environment.   METHOD: We model the driver's decision to deploy visual attention as a stochastic sequential decision-making problem and propose hierarchical reinforcement learning as a computationally tractable solution to it. The supervisory level deploys attention based on per-task value estimates, which incorporate beliefs about risk. Model simulations are compared against human data collected in a driving simulator.   RESULTS: Human data show adaptation to the attentional demands of ongoing tasks, as measured in lane deviation and in-car gaze deployment. The predictions of our model fit the human data on these metrics.   CONCLUSION: Multitasking strategies can be understood as optimal adaptation under uncertainty, wherein the driver adapts to cognitive constraints and the task environment's uncertainties, aiming to maximize the expected long-term utility. Safe and unsafe behaviors emerge as the driver has to arbitrate between conflicting goals and manage uncertainty about them.  APPLICATION: Simulations can inform studies of conditions that are likely to give rise to unsafe driving behavior.<p /> <p>Language: en</p>",
language="en",
issn="0018-7208",
doi="10.1177/0018720820927687",
url="http://dx.doi.org/10.1177/0018720820927687"
}