Assessing gastronomic tourism using machine learning approach: The case of google review

Author:

Alzboun GNidal,Alhur Mohammad,Khawaldah Hamzah,Alshurideh Muhammad Turki

Abstract

This study aims to evaluate tourists' reviews of gastronomy tourism expressed in Google reviews according to the CAC model (Cognitive, Affective, and Conative), and to examine the inter-correlations between CAC model components. The study was applied to traditional restaurants in Amman downtown. The research then extracts the main themes from the textual reviews as well as a sentiment score of an affective image of traditional Amman downtown restaurants. The results of machine learning experiments suggest that the proposed approach can identify traditional restaurant reviews in Amman downtown into CAC model components. The results also show that the Random Forest algorithm performed best in the cognitive and cognitive dimensions, whereas the Neural Network algorithm performed best in the affective dimension. ML classifier revealed that most of the reviews were classified as cognitive (such as the type of food, and services) while the remaining reviews were classified as affective (such as pleasure and arousal) and conative (such as intention to recommend, and positive word of mouth) respectively. The highest probability of the cognitive components was the traditional food topic reflecting the unique image of Jordanian traditional food. Affective images formed by users were mainly positive emotions, indicating that the destination image spread well.

Publisher

Growing Science

Subject

Artificial Intelligence,Computer Networks and Communications,Computer Science Applications,Communication,Information Systems,Software

Reference1 articles.

1. Assessing gastronomic tourism using machine learning approach: The case of google review;Alzboun;International Journal of Data and Network Science,2023

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