Liu Yu-Li, Yan Wenjia, Hu Bo, Li Zhuoyang, Lai Yik Ling
Department of Media and Communication, City University of Hong Kong, Kowloon Tong, Hong Kong.
Digit Health. 2022 Oct 2;8:20552076221129718. doi: 10.1177/20552076221129718. eCollection 2022 Jan-Dec.
Based on the heuristic-systematic model (HSM) and health belief model (HBM), this study aims to investigate how personalization and source expertise in responses from a health chatbot influence users' health belief-related factors (i.e. perceived benefits, self-efficacy and privacy concerns) as well as usage intention.
A 2 (personalization vs. non-personalization) × 2 (source expertise vs. non-source expertise) online between-subject experiment was designed. Participants were recruited in China between April and May 2021. Data from 260 valid observations were used for the data analysis.
Source expertise moderated the effects of personalization on health belief factors. Perceived benefits and self-efficacy mediated the relationship between personalization and usage intention when the source expertise cue was presented. However, the privacy concerns were not influenced by personalization and source expertise and did not significantly affect usage intention toward the health chatbot.
This study verified that in the health chatbot context, source expertise as a heuristic cue may be a necessary condition for effects of the systematic cue (i.e. personalization), which supports the HSM's arguments. By introducing the HBM in the chatbot experiment, this study is expected to provide new insights into the acceptance of healthcare AI consulting services.
基于启发式系统模型(HSM)和健康信念模型(HBM),本研究旨在探讨健康聊天机器人回复中的个性化和来源专业性如何影响用户的健康信念相关因素(即感知收益、自我效能感和隐私担忧)以及使用意愿。
设计了一项2(个性化与非个性化)×2(来源专业性与非来源专业性)的在线组间实验。2021年4月至5月在中国招募参与者。来自260个有效观察的数据用于数据分析。
来源专业性调节了个性化对健康信念因素的影响。当呈现来源专业性线索时,感知收益和自我效能感在个性化与使用意愿之间起中介作用。然而,隐私担忧不受个性化和来源专业性的影响,也未对健康聊天机器人的使用意愿产生显著影响。
本研究证实,在健康聊天机器人情境中,来源专业性作为一种启发式线索可能是系统线索(即个性化)产生效果的必要条件,这支持了启发式系统模型的观点。通过在聊天机器人实验中引入健康信念模型,本研究有望为医疗保健人工智能咨询服务的接受度提供新的见解。