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Advisor(s)
Abstract(s)
This study explores twoWorld Heritage Sites (WHS) as tourism destinations by applying
several uncommon techniques in these settings: Smart Tourism Analytics, namely Text mining,
Sentiment Analysis, and Market Basket Analysis, to highlight patterns according to attraction,
nationality, and repeated visits. Salamanca (Spain) and Coimbra (Portugal) are analyzed and
compared based on 8,638 online travel reviews (OTR), from TripAdvisor (2017–2018). Findings show
that WHS reputation does not seem to be relevant to visitors-reviewers. Additionally, keyword
extraction reveals that the reviews do not di er from language to language or from city to city,
and it was also possible to identify several keywords related to history and heritage; in particular,
architectural styles, names of kings, and places. The study identifies topics that could be used by
destination management organizations to promote these cities, highlights the advantages of applying
a data science approach, and confirms the rich information value of OTRs as a tool to (re)position the
destination according to smart tourism design tenets.
Description
Keywords
User-generated content Text mining Data science UNESCO heritage sites Sentiment analysis eWOM
Citation
Publisher
MDPI