An Effective Hotel Recommendation System through Processing Heterogeneous Data

Recommendation systems have recently gained a lot of popularity in various industries such as entertainment and tourism. They can act as filters of information by providing relevant suggestions to the users through processing heterogeneous data from different networks. Many travelers and tourists routinely rely on textual reviews, numerical ratings, and points of interest to select hotels in cities worldwide. To attract more customers, online hotel booking systems typically rank their hotels based on the recommendations from their customers. In this paper, we present a framework that can rank hotels by analyzing hotels’ customer reviews and nearby amenities. In addition, a framework is presented that combines the scores generated from user reviews and surrounding facilities. We perform experiments using datasets from online hotel booking platforms such as TripAdvisor and Booking to evaluate the effectiveness and applicability of the proposed framework. We first store the keywords extracted from reviews and assign weights to each considered unigram and bigram keywords and, then, we give a numerical score to each considered keyword. Finally, our proposed system aggregates the scores generated from the reviews and surrounding environments from different categories of the facilities. Experimental results confirm the effectiveness of the proposed recommendation framework.

[1]  Kuan-Ching Li,et al.  Building a mobile movie recommendation service by user rating and APP usage with linked data on Hadoop , 2017, Multimedia Tools and Applications.

[2]  Z. Schwartz,et al.  What can big data and text analytics tell us about hotel guest experience and satisfaction , 2015 .

[3]  Yehuda Koren,et al.  Matrix Factorization Techniques for Recommender Systems , 2009, Computer.

[4]  Davide Proserpio,et al.  Advertising Strategy in the Presence of Reviews: An Empirical Analysis , 2019, Mark. Sci..

[5]  Angela Siew-Hoong Lee,et al.  Voice of Customers: Text Analysis of Hotel Customer Reviews (Cleanliness, Overall Environment & Value for Money) , 2017, ICBDR 2017.

[6]  ChengXiang Zhai,et al.  Opinion-based entity ranking , 2012, Information Retrieval.

[7]  Li Chen,et al.  Recommender systems based on user reviews: the state of the art , 2015, User Modeling and User-Adapted Interaction.

[8]  Luca Cagliero,et al.  From Hotel Reviews to City Similarities: A Unified Latent-Space Model , 2020 .

[9]  Martin Gellerstedt,et al.  The impact of word of mouth when booking a hotel: could a good friend’s opinion outweigh the online majority? , 2019, J. Inf. Technol. Tour..

[10]  Imran Sarwar Bajwa,et al.  An Intelligent Data Analysis for Recommendation Systems Using Machine Learning , 2019, Sci. Program..

[11]  Ching-Sheng Wang,et al.  Location-Based Hotel Recommendation System , 2018, WICON.

[12]  Yasuhiko Morimoto,et al.  Recommending Hotels by Social Conditions of Locations , 2015, Tourism Informatics.

[13]  Yang Yang,et al.  Understanding Guest Satisfaction with Urban Hotel Location , 2018 .

[14]  Z. Mao,et al.  Image of All Hotel Scales on Travel Blogs: Its Impact on Customer Loyalty , 2012 .

[15]  Hongyan Liu,et al.  Combining user preferences and user opinions for accurate recommendation , 2013, Electron. Commer. Res. Appl..

[16]  Mohammad Shamsul Arefin,et al.  An Agent Based Parallel and Secure Framework to Collect Feedbacks , 2019, J. Comput..

[17]  Xu Yang,et al.  Exploring IoT Location Information to Perform Point of Interest Recommendation Engine: Traveling to a New Geographical Region , 2019, Sensors.