A Mental Health and Well-Being Chatbot: User Event Log Analysis

Conversational user interfaces, or chatbots, are becoming more popular in the realm of digital health and well-being. While many studies focus on measuring the cause or effect of a digital intervention on people's health and well-being (outcomes), there is a need to understand how users really...

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Veröffentlicht in:JMIR mHealth and uHealth 2023-07, Vol.11, p.e43052-e43052
Hauptverfasser: Booth, Frederick, Potts, Courtney, Bond, Raymond, Mulvenna, Maurice, Kostenius, Catrine, Dhanapala, Indika, Vakaloudis, Alex, Cahill, Brian, Kuosmanen, Lauri, Ennis, Edel
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Sprache:eng
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Zusammenfassung:Conversational user interfaces, or chatbots, are becoming more popular in the realm of digital health and well-being. While many studies focus on measuring the cause or effect of a digital intervention on people's health and well-being (outcomes), there is a need to understand how users really engage and use a digital intervention in the real world. In this study, we examine the user logs of a mental well-being chatbot called ChatPal, which is based on the concept of positive psychology. The aim of this research is to analyze the log data from the chatbot to provide insight into usage patterns, the different types of users using clustering, and associations between the usage of the app's features. Log data from ChatPal was analyzed to explore usage. A number of user characteristics including user tenure, unique days, mood logs recorded, conversations accessed, and total number of interactions were used with k-means clustering to identify user archetypes. Association rule mining was used to explore links between conversations. ChatPal log data revealed 579 individuals older than 18 years used the app with most users being female (n=387, 67%). User interactions peaked around breakfast, lunchtime, and early evening. Clustering revealed 3 groups including "abandoning users" (n=473), "sporadic users" (n=93), and "frequent transient users" (n=13). Each cluster had distinct usage characteristics, and the features were significantly different (P
ISSN:2291-5222
2291-5222
DOI:10.2196/43052