1. Assumptions Checked
- Author
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Alexis Hiniker, Mingrui Ray Zhang, Yini Guan, Julie A. Kientz, Erin Beneteau, Olivia K. Richards, and Jason C. Yip
- Subjects
Diffusion of innovation theory ,Computer Networks and Communications ,Interface (Java) ,Computer science ,05 social sciences ,Echo (computing) ,020207 software engineering ,02 engineering and technology ,Trial and error ,Influencer marketing ,Human-Computer Interaction ,Trustworthiness ,Hardware and Architecture ,Software deployment ,Human–computer interaction ,0202 electrical engineering, electronic engineering, information engineering ,0501 psychology and cognitive sciences ,Set (psychology) ,050107 human factors - Abstract
Users of voice assistants often report that they fall into patterns of using their device for a limited set of interactions, like checking the weather and setting alarms. However, it's not clear if limited use is, in part, due to lack of learning about the device's functionality. We recruited 10 diverse families to participate in a one-month deployment study of the Echo Dot, enabling us to investigate: 1) which features families are aware of and engage with, and 2) how families explore, discover, and learn to use the Echo Dot. Through audio recordings of families' interactions with the device and pre- and post-deployment interviews, we find that families' breadth of use decreases steadily over time and that families learn about functionality through trial and error, asking the Echo Dot about itself, and through outside influencers such as friends and family. Formal outside learning influencers, such as manufacturer emails, are less influential. Drawing from diffusion of innovation theory, we describe how a home-based voice interface might be positioned as a near-peer to the user, and that by describing its own functionality using just-in-time learning, the home-based voice interface becomes a trustworthy learning influencer from which users can discover new functionalities.
- Published
- 2020
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