Using Screenshot Data to Examine the Phone Use People Regret

Smartphone users often regret aspects of their phone use, but pinpointing specific ways in which the design of an interface contributes to regrettable use can be challenging due to the complexity of app features and user intentions. We conducted a one-week study with 17 Android users, using a novel...

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Hauptverfasser: Guo, Longjie, Fu, Yue, Lin, Xiran, Xu, Xuhai "Orson", Chang, Yung-Ju, Hiniker, Alexis
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creator Guo, Longjie
Fu, Yue
Lin, Xiran
Xu, Xuhai "Orson"
Chang, Yung-Ju
Hiniker, Alexis
description Smartphone users often regret aspects of their phone use, but pinpointing specific ways in which the design of an interface contributes to regrettable use can be challenging due to the complexity of app features and user intentions. We conducted a one-week study with 17 Android users, using a novel method where we passively collected screenshots every five seconds, which were analyzed via a multimodal large language model to extract fine-grained activity. Paired with experience sampling, surveys, and interviews, we found that regret varies based on user intention, with non-intentional and social media use being especially regrettable. Regret also varies by social media activity; participants were most likely to regret viewing comments and algorithmically recommended content. Additionally, participants frequently deviated to browsing social media when their intention was direct communication, which slightly increased their regret. Our findings provide guidance to designers and policy-makers seeking to improve users' experience and autonomy.
doi_str_mv 10.48550/arxiv.2410.11354
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title Using Screenshot Data to Examine the Phone Use People Regret
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