Published:
2021-11-14
Proceedings:
Proceedings of the AAAI Conference on Human Computation and Crowdsourcing, 9
Volume
Issue:
Vol. 9 (2021): Proceedings of the Ninth AAAI Conference on Human Computation and Crowdsourcing
Track:
Full Archival Papers
Downloads:
Abstract:
Crowd-Powered Conversational Systems (CPCS) are gaining traction due to their potential utility in a range of application fields where automated conversational interfaces are still inadequate. Currently, long response times negatively impact CPCSs, limiting their potential application as conversational partners. Related research has focused on developing algorithms for swiftly hiring workers and synchronous crowd coordination techniques to ensure high-quality work. Evaluation studies typically concern system reaction times and performance measurements, but have so far not examined the effects of extended wait times on users. The goal of this study, based on time perception models, is to explore how effective different time fillers are at reducing the negative impacts of waiting in CPCSs. To this end, we conducted a rigorous simulation-based between-subjects (N = 930) study on the Prolific crowdsourcing platform to assess the influence of different filler types across three levels of delay (8, 16 & 32s) for Information Retrieval (IR) and stress management tasks. Our results show that asking users to perform secondary tasks (e.g., microtasks or breathing exercises) while waiting for longer periods of time helped divert their attention away from timekeeping, increased their engagement, and resulted in shorter perceived waiting times. For shorter delays, conversational fillers generated more intense immersion and contributed to shorten the perception of time.
DOI:
10.1609/hcomp.v9i1.18935
HCOMP
Vol. 9 (2021): Proceedings of the Ninth AAAI Conference on Human Computation and Crowdsourcing
ISBN 978-1-57735-872-5