“Take Nothing on Its Look”: Revealing Users’ Expectations and Experiences in Social Human–Robot Interaction
2026 (English)In: ACM Transactions on Human-Robot Interaction, E-ISSN 2573-9522, Vol. 15, no 2, p. 1-47, article id 29Article in journal (Refereed) Published
Abstract [en]
The use of social robots in many sectors of society is predicted to progressively increase. Therefore, exploring how expectations play a role in and change users’ experiences when interacting with these robots over time is necessary. From an interpretative and insight-driven approach, our aim was to explore how humans experience in-person interactions with the social robot Pepper, which was equipped with the OpenAI GPT-3 language model. Qualitative data from 62 video recordings of the interactions with Pepper and post-test interviews were collected from 31 participants. An experiential reflexive thematic analysis was applied. The main findings include various levels of interaction quality, different interaction strategies, and elements influencing the users’ expectations and experiences, which were synthesized into a coherent framework. It appears that the participants adapted their interaction strategies based on their expectations and the perceived capability of the robot, which influenced their experiences. This reveals that positive user experience is not solely determined by interaction quality, showing the interplay among these aspects when interacting with a social robot. To conclude, our findings underscore the intricate nature of the role of user expectations and experiences in social human–robot interaction. The work adds complementary qualitative approaches to the Human–Robot Interaction community to provide additional insights on interacting with social robots.
Place, publisher, year, edition, pages
ACM Digital Library, 2026. Vol. 15, no 2, p. 1-47, article id 29
Keywords [en]
Expectations, Social Robot, Human-Robot Interaction, User Experience, Social Robot Expectation Gap, Social Robot Pepper, OpenAI GPT-3 Language Model, Qualitative Research
National Category
Human Computer Interaction
Research subject
Interaction Lab (ILAB)
Identifiers
URN: urn:nbn:se:his:diva-26124DOI: 10.1145/3772070OAI: oai:DiVA.org:his-26124DiVA, id: diva2:2032572
Funder
Knowledge FoundationUppsala University
Note
CC BY-NC-ND 4.0
Authors’ Contact Information: Jessica Lindblom (corresponding author), Department of Information Technology, Uppsala University, Uppsala, Sweden; e-mail: jessica.lindblom@it.uu.se
Published: 22 December 2025. Online AM: 17 October 2025. Accepted: 24 September 2025. Revised: 12 September 2025. Received: 12 May 2024
This work was partially supported through the Knowledge Foundation, Sweden as part of the Recruitment and Strategic Knowledge Reinforcement Initiative. The publication of this article was supported by the Uppsala University Library, Sweden.
2026-01-272026-01-272026-01-28Bibliographically approved