Perak's tourism through the lens of social media: a computer-based sentiment analysis approach / Raudatul Jannah Rostam, Azilawati Azizan and Nurkhairizan Khairudin

Rostam, Raudatul Jannah and Azizan, Azilawati and Khairudin, Nurkhairizan (2023) Perak's tourism through the lens of social media: a computer-based sentiment analysis approach / Raudatul Jannah Rostam, Azilawati Azizan and Nurkhairizan Khairudin. Journal of Tourism, Hospitality and Culinary Arts, 15 (2). pp. 90-107. ISSN 1985-8914 ; 2590-3837

Official URL: https://www.jthca.org/

Abstract

Perak, a state in Malaysia, has a lot of exciting and captivating places for tourists to visit. There are many different natural wonders, cultural landmarks, historical sites, and delicious foods to enjoy. This makes Perak special and can bring in a lot of tourists. In today's digital age, social media plays a big role in sharing information, including tourism. With the presence of technology that can discover feelings and emotions from social media texts, such as sentiment analysis, we can make this even better. Sentiment analysis is the process of analyzing and identifying the feelings conveyed in a text such as positivity or negativity by utilizing natural language processing (NLP) and machine learning approach. This project aims to discover the sentiments of tourist attraction in Perak by analyzing Twitter data. The project has three objectives: first to collect and prepare a suitable and reliable dataset, then classify the data into positive, negative, or neutral sentiments using NLP techniques, and finally develop a web-based application to visualize those sentiments. To accomplish these objectives, a collection of tweets pertaining to Perak’s tourist attractions has been gathered and prepared for analysis. TextBlob library in the Python programming language is used to extract sentiment of tweets from Twitter data and classify them into positive, negative, or neutral categories. Then a machine learning approach, Support Vector Machine (SVM) is used to create, train and test the sentiment model. And as a result, utilizing the SVM classifier with a linear kernel and a split of 70:30 between training and testing data yields an increased accuracy rate of 75.50%. This project is important because it provides valuable insight to the tourism sector in Perak.

Metadata

Item Type: Article
Creators:
Creators
Email / ID Num.
Rostam, Raudatul Jannah
UNSPECIFIED
Azizan, Azilawati
azila899@uitm.edu.my
Khairudin, Nurkhairizan
UNSPECIFIED
Subjects: G Geography. Anthropology. Recreation > G Geography (General) > Travel. Voyages and travels (General) > Travel and state. Tourism
Divisions: Universiti Teknologi MARA, Selangor > Puncak Alam Campus > Faculty of Hotel and Tourism Management
Journal or Publication Title: Journal of Tourism, Hospitality and Culinary Arts
UiTM Journal Collections: UiTM Journal > Journal of Tourism, Hospitality & Culinary Arts (JTHCA)
ISSN: 1985-8914 ; 2590-3837
Volume: 15
Number: 2
Page Range: pp. 90-107
Keywords: Perak, sentiment analysis, tourism attractions, Twitter data
Date: December 2023
URI: https://ir.uitm.edu.my/id/eprint/94870
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