Local food experiences before and after COVID-19: a sentiment analysis of EWOM
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Purpose – To use Natural Language Processing (NLP) to explore how people feel and what
they share online about their experiences with food. In addition, to learn how these experiences
have evolved recently, differences before and during the crisis COVID -19 will be explored.
Methodology/Design/Approach – A total of 35,001 reviews of restaurants and local cuisine
establishments near tourist attractions in the city of Ayutthaya, Thailand, were extracted from
the Google Local Guide platform. Several NLP techniques were used to analyse the text data,
including sentiment analysis, word cloud analysis, and the N-gramme model.
Findings – The results reveal travellers’ hidden sentiments toward dining experiences. Key
attributes of experience sharing related to food activities in online reviews were identified
both before and after COVID -19. From a theoretical perspective, the findings are relevant
for researchers to recognise tourists’ behaviour in sharing local food experiences. From a
practical perspective, decision makers will have a better understanding of tourist behaviour to
develop and implement appropriate strategies.
Originality of the research – This study is the first to analyse and interpret online reviews
on Google Maps platform by applying text mining and sentiment analysis in gastronomic
tourism research, especially in the context of COVID -19