Simon T van Baal, Suong T T Le, Farhad Fatehi, Antonio Verdejo-Garcia, Jakob Hohwy
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Testing behaviour change with an artificial intelligence chatbot in a randomized controlled study.
Chatbots can effect large-scale behaviour change because they are accessible through social media, flexible, scalable, and gather data automatically. Yet research on the feasibility and effectiveness of chatbot-administered behaviour change interventions is sparse. The effectiveness of established behaviour change interventions when implemented in chatbots is not guaranteed, given the unique human-machine interaction dynamics. We pilot-tested chatbot-based behaviour change through information provision and embedded animations. We evaluated whether the chatbot could increase understanding and intentions to adopt protective behaviours during the pandemic. Fifty-nine culturally and linguistically diverse participants received a compassion intervention, an exponential growth intervention, or no intervention. We measured participants' COVID-19 testing intentions and measured their staying-home attitudes before and after their chatbot interaction. We found reduced uncertainty about protective behaviours. The exponential growth intervention increased participants' testing intentions. This study provides preliminary evidence that chatbots can spark behaviour change, with applications in diverse and underrepresented groups.
期刊介绍:
The Journal of Public Health Policy (JPHP) will continue its 35 year tradition: an accessible source of scholarly articles on the epidemiologic and social foundations of public health policy, rigorously edited, and progressive.
JPHP aims to create a more inclusive public health policy dialogue, within nations and among them. It broadens public health policy debates beyond the ''health system'' to examine all forces and environments that impinge on the health of populations. It provides an exciting platform for airing controversy and framing policy debates - honing policies to solve new problems and unresolved old ones.
JPHP welcomes unsolicited original scientific and policy contributions on all public health topics. New authors are particularly encouraged to enter debates about how to improve the health of populations and reduce health disparities.