Published:
2020-10-09
Proceedings:
Proceedings of the AAAI Conference on Human Computation and Crowdsourcing, 8
Volume
Issue:
Vol. 8 (2020): Proceedings of the Eighth AAAI Conference on Human Computation and Crowdsourcing
Track:
Full Papers
Downloads:
Abstract:
Domain-specific intelligent systems are meant to help system users in their decision-making process. Many systems aim to simultaneously support different users with varying levels of domain expertise, but prior domain knowledge can affect user trust and confidence in detecting system errors. While it is also known that user trust can be influenced by first impressions with intelligent systems, our research explores the relationship between ordering bias and domain expertise when encountering errors in intelligent systems. In this paper, we present a controlled user study to explore the role of domain knowledge in establishing trust and susceptibility to the influence of first impressions on user trust. Participants reviewed an explainable image classifier with a constant accuracy and two different orders of observing system errors (observing errors in the beginning of usage vs. in the end). Our findings indicate that encountering errors early-on can cause negative first impressions for domain experts, negatively impacting their trust over the course of interactions. However, encountering correct outputs early helps more knowledgable users to dynamically adjust their trust based on their observations of system performance. In contrast, novice users suffer from over-reliance due to their lack of proper knowledge to detect errors.
DOI:
10.1609/hcomp.v8i1.7469
HCOMP
Vol. 8 (2020): Proceedings of the Eighth AAAI Conference on Human Computation and Crowdsourcing
ISBN 978-1-57735-848-0