A Transparency Paradox? Investigating the Impact of Explanation Specificity and Autonomous Vehicle Perceptual Inaccuracies on Passengers
Daniel Omeiza, Raunak Bhattacharyya, Marina Jirotka, Nick Hawes and, Lars Kunze

TL;DR
This study investigates how explanation specificity in autonomous vehicle systems influences passenger safety perceptions and anxiety, revealing that specific explanations increase perceived safety with minimal errors but may heighten anxiety when errors are disclosed.
Contribution
The paper introduces a rule-based explanation model for autonomous vehicles and empirically examines how explanation specificity affects passenger perceptions and emotions.
Findings
Passengers feel safer with specific explanations during minimal errors.
Abstract explanations reduce perceived safety when perception errors occur.
High transparency explanations can increase passenger anxiety when errors are revealed.
Abstract
Transparency in automated systems could be afforded through the provision of intelligible explanations. While transparency is desirable, might it lead to catastrophic outcomes (such as anxiety), that could outweigh its benefits? It's quite unclear how the specificity of explanations (level of transparency) influences recipients, especially in autonomous driving (AD). In this work, we examined the effects of transparency mediated through varying levels of explanation specificity in AD. We first extended a data-driven explainer model by adding a rule-based option for explanation generation in AD, and then conducted a within-subject lab study with 39 participants in an immersive driving simulator to study the effect of the resulting explanations. Specifically, our investigation focused on: (1) how different types of explanations (specific vs. abstract) affect passengers' perceived safety,…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Forecasting Techniques and Applications
