A Client-Centric Evaluation System to Evaluate Guest’s Satisfaction on Airbnb Using Machine Learning and NLP

Author:

Chiny Mohamed1ORCID,Bencharef Omar2,Hadi Moulay Youssef1,Chihab Younes1

Affiliation:

1. Laboratory of Computer Sciences, Ibn Tofail University, Kenitra, Morocco

2. Department of Computer Sciences, Cadi Ayyad University, Marrakesh, Morocco

Abstract

Understanding the determinants of satisfaction in P2P hosting is crucial, especially with the emergence of platforms such as Airbnb, which has become the largest platform for short-term rental accommodation. Although many studies have been carried out in this direction, there are still gaps to be filled, particularly with regard to the apprehension of customers taking into account their category. In this study, we took a machine learning-based approach to examine 100,000 customer reviews left on the Airbnb platform to identify different dimensions that shape customer satisfaction according to each category studied (individuals, couples, and families). However, the data collected do not give any information on the category to which the customer belongs to. So, we applied natural language processing (NLP) algorithms to the reviews in order to find clues that could help us segment them, and then we trained two regression models, multiple linear regression and support vector regression, in order to calculate the coefficients acting on each of the 6 elementary scores (precision, cleanliness, check-in, communication, location, and value) noted on Airbnb, taking into account the category of customers who evaluated the performance of their accommodation. The results suggest that customers are not equally interested in satisfaction metrics. In addition, disparities were noted for the same indicator depending on the category to which the client belongs to. In light of these results, we suggest that improvements be made to the rating system adopted by Airbnb to make it suitable for each category to which the client belongs to.

Publisher

Hindawi Limited

Subject

Artificial Intelligence,Computer Networks and Communications,Computer Science Applications,Civil and Structural Engineering,Computational Mechanics

Reference67 articles.

1. A comparison of key attributes between peer-to-peer accommodations and hotels using online reviews

2. Determinants of peer-to-peer rental rating scores: the case of Airbnb;L. Zhu;International Journal of Contemporary Hospitality Management,2019

3. Unfolding the drivers for sentiments generated by Airbnb Experiences;S. . Moro;International Journal of Culture, Tourism and Hospitality Research,2019

4. Do airbnb host listing attributes influence room pricing homogenously?

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