Purpose – Given the importance of chatbots in customer service in tourism, this paper aims to understand the
drivers that predispose regular consumers of restaurant recommendation chatbots to continue using them.
Design/methodology/approach – A total of 386 regular consumers of a chatbot via WhatsApp restaurant
recommender responded to an online questionnaire (inspired by scales found in the literature on technology
adoption). Structural equation modeling was used to test the hypotheses.
Findings – Significant predictors of intention to continue using these chatbots included “effort expectancy
(EE),” “hedonic motivation (HM),” “price value (PV)” and “habit (HT).” Specifically, HT still has a long way
to go in terms of its performance, and it will be possible to work on it. Furthermore, two variables, EE and HM,
act as a bottleneck when it comes to explaining this recurrent usage intention. Factors such as “performance
expectancy (PE),” “facilitating conditions (FC)” and “social influence (SI)” did not influence “behavioral
intention (BI).” Likewise, the moderating variables, age and gender, are not significant. Finally, the predictive
capability of the model is demonstrated. The study findings will enable the development of effective strategies
to foster consumer loyalty to this new technology in the restaurant industry.
Originality/value – This study contributes, building on the suitability of the unified theory of acceptance and
use of technology 2 model, to explain users’ intention to continue using chatbot tourism services in the context
of an information search for an unplanned and varied purchase decision, namely, restaurant recommendation
services. To the best of the authors’ knowledge, this is the first analysis of tourist’s intention to reuse a real and
fully functional chatbot via mobile instant messaging.