2023
DOI: 10.1108/jtf-09-2022-0228
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An empirical study on the imbalance phenomenon of data from recommendation questionnaires in the tourism sector

Abstract: PurposeRecommendation systems are a fundamental tool for hotels to adopt a differentiating competitive strategy. The main purpose of this work is to use machine learning techniques to treat imbalanced data sets, not applied until now in the tourism field. These techniques have allowed the authors to analyse the influence of imbalance data on hotel recommendation models and how this phenomenon affects client dissatisfaction.Design/methodology/approachAn opinion survey was conducted among hotel customers of diff… Show more

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