USP Electronic Research Repository

Capitalizing on big data and revolutionary 5G technology: extracting and visualizing ratings and reviews of global chain hotels

Gaur, Loveleen and Afaq, Anam and Solanki, Arun and Singh, Gurmeet and Sharma, Shavneet and Jhanjhi, N.Z. and My, Hoang T. and Le, Dac-Nhuong (2021) Capitalizing on big data and revolutionary 5G technology: extracting and visualizing ratings and reviews of global chain hotels. Computers & Electrical Engineering, 95 . NA. ISSN 0045-7906

[img] PDF - Published Version
Restricted to Repository staff only

Download (2446Kb)

    Abstract

    This paper aims to use machine learning (ML) algorithm for natural language pre-processing (NLP), text mining (TM), and sentiment analysis (SA) techniques to analyze and examine 45,500 online reviews of customers of 50 global chain hotels from different online review sites. Furthermore, the paper addresses the new business value and experiences that the revolutionary 5G technology can bring to the hotel industry. The research findings revealed that the general review star rating corresponds with the opinion (sentiment) scores for the title and the full substance of the online reviews. The case study’s contextual analysis also uncovered that both fulfilled and disappointed customers have a frequent inclination for five categories: food, stay, rooms, service, and staff. This study contributes both theoretically and practically to the multidisciplinary domains of computer science, information systems, and tourism and discovers hidden patterns in data using visual analytics techniques.

    Item Type: Journal Article
    Subjects: H Social Sciences > H Social Sciences (General)
    Q Science > QA Mathematics > QA75 Electronic computers. Computer science
    Divisions: School of Business and Management (SBM)
    Depositing User: Gurmeet Singh
    Date Deposited: 06 Sep 2021 15:01
    Last Modified: 06 Sep 2021 15:01
    URI: http://repository.usp.ac.fj/id/eprint/12954
    UNSPECIFIED

    Actions (login required)

    View Item

    Document Downloads

    More statistics for this item...