Towards Mass Adoption of Contact Tracing Apps -- Learning from Users'
Preferences to Improve App Design
- URL: http://arxiv.org/abs/2011.12329v1
- Date: Tue, 24 Nov 2020 19:08:09 GMT
- Title: Towards Mass Adoption of Contact Tracing Apps -- Learning from Users'
Preferences to Improve App Design
- Authors: Dana Naous, Manus Bonner, Mathias Humbert, Christine Legner
- Abstract summary: We explore user preferences for contact tracing apps using market research techniques and conjoint analysis.
Our results confirm the privacy-preserving design of most European contact tracing apps.
We conclude that adding goal-congruent features will play an important role in fostering mass adoption.
- Score: 3.187723878624947
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Contact tracing apps have become one of the main approaches to control and
slow down the spread of COVID-19 and ease up lockdown measures. While these
apps can be very effective in stopping the transmission chain and saving lives,
their adoption remains under the expected critical mass. The public debate
about contact tracing apps emphasizes general privacy reservations and is
conducted at an expert level, but lacks the user perspective related to actual
designs. To address this gap, we explore user preferences for contact tracing
apps using market research techniques, and specifically conjoint analysis. Our
main contributions are empirical insights into individual and group
preferences, as well as insights for prescriptive design. While our results
confirm the privacy-preserving design of most European contact tracing apps,
they also provide a more nuanced understanding of acceptable features. Based on
market simulation and variation analysis, we conclude that adding
goal-congruent features will play an important role in fostering mass adoption.
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