Abstract

With rapid advancements in internet applications, the growth rate of recommendation systems for tourists has skyrocketed. This has generated an enormous amount of travel-based data in the form of reviews, blogs, and ratings. However, most recommendation systems only recommend the top-rated places. Along with the top-ranked places, we aim to discover places that are often ignored by tourists owing to lack of promotion or effective advertising, referred to as under-emphasized locations. In this study, we use all relevant data, such as travel blogs, ratings, and reviews, in order to obtain optimal recommendations. We also aim to discover the latent factors that need to be addressed, such as food, cleanliness, and opening hours, and recommend a tourist place based on user history data. In this study, we propose a cross mapping table approach based on the location’s popularity, ratings, latent topics, and sentiments. An objective function for recommendation optimization is formulated based on these mappings. The baseline algorithms are latent Dirichlet allocation (LDA) and support vector machine (SVM). Our results show that the combined features of LDA, SVM, ratings, and cross mappings are conducive to enhanced performance. The main motivation of this study was to help tourist industries to direct more attention towards designing effective promotional activities for under-emphasized locations.

Highlights

  • With recent advances in internet applications and widespread communication technologies, customers are able to share their travel or purchase experiences, feelings, and reviews online

  • With the rise of internet applications, it has become a lot easier for travelers to plan their trips and decide target locations to visit based on the reviews and experiences of others

  • Many recommendation systems have been proposed in recent years for tourist recommendations

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Summary

Introduction

With recent advances in internet applications and widespread communication technologies, customers are able to share their travel or purchase experiences, feelings, and reviews online. These online reviews play a vital role in acquiring tourism-related services [1] and exert a significant impact on the decision-making behaviors of other users [2]. The development of information and communication technologies has a significant impact on the behaviors of both travelers and the tourism industry [3]. It has been shown that people visit around 26 websites and spend around two hours searching for places to visit that have affordable deals [5]. Online reviews can be viewed as a form of internet communication, and are enabled by different internet applications, websites, review and rating sites, social networking sites (SNS), and blogs

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