Aspect-Based Sentiment Analysis using Adaptive Aspect on Tourist Reviews in Jakarta

Tourism is one of the business fields affected by the Covid-19 pandemic. The decline in the number of tourists, both domestic and foreign, has resulted in the contribution of the tourism business sector to Indonesia's GDP decreasing. The government is now preparing plans to restore and improve...

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Main Authors: Ade Rifqy Setyawan, Lya Hulliyatus Suadaa, Budi Yuniarto
Format: Article
Language:Indonesian
Published: Islamic University of Indragiri 2024-11-01
Series:Sistemasi: Jurnal Sistem Informasi
Online Access:https://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/4585
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author Ade Rifqy Setyawan
Lya Hulliyatus Suadaa
Budi Yuniarto
author_facet Ade Rifqy Setyawan
Lya Hulliyatus Suadaa
Budi Yuniarto
author_sort Ade Rifqy Setyawan
collection DOAJ
description Tourism is one of the business fields affected by the Covid-19 pandemic. The decline in the number of tourists, both domestic and foreign, has resulted in the contribution of the tourism business sector to Indonesia's GDP decreasing. The government is now preparing plans to restore and improve tourism in tourist destination areas, one of which is DKI Jakarta in order to increase visits by domestic and foreign tourists. In achieving these goals, this study propose to utilize reviews about tourist attractions in DKI Jakarta from Google Maps and extract public opinion by conducting aspect-based sentiment analysis. Multi-label classification is a common method that is often used in aspect-based sentiment analysis. However, the multi-label approach has limited flexibility in the aspects used. One alternative method that can be used is an adaptive aspect classification method which is more flexible if there are additional new aspects used. This research aims to automate sentiment classification of tourist reviews for each aspect by developing an aspect level sentiment analysis model with an adaptive aspect classification method which will be compared with multi-label classification as a baseline method. The models used in both methods are transfer learning IndoBERT. The adaptive aspect classification method with aspect level sentiment analysis has better performance in comparison to baseline method multi-label classification with accuracy values and F1-score respectively 0.90394 and 0.71504.
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issn 2302-8149
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language Indonesian
publishDate 2024-11-01
publisher Islamic University of Indragiri
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series Sistemasi: Jurnal Sistem Informasi
spelling doaj-art-00eb3947fded4c859892429266a7e0212025-08-20T02:35:36ZindIslamic University of IndragiriSistemasi: Jurnal Sistem Informasi2302-81492540-97192024-11-011362456246610.32520/stmsi.v13i6.4585902Aspect-Based Sentiment Analysis using Adaptive Aspect on Tourist Reviews in JakartaAde Rifqy SetyawanLya Hulliyatus SuadaaBudi YuniartoTourism is one of the business fields affected by the Covid-19 pandemic. The decline in the number of tourists, both domestic and foreign, has resulted in the contribution of the tourism business sector to Indonesia's GDP decreasing. The government is now preparing plans to restore and improve tourism in tourist destination areas, one of which is DKI Jakarta in order to increase visits by domestic and foreign tourists. In achieving these goals, this study propose to utilize reviews about tourist attractions in DKI Jakarta from Google Maps and extract public opinion by conducting aspect-based sentiment analysis. Multi-label classification is a common method that is often used in aspect-based sentiment analysis. However, the multi-label approach has limited flexibility in the aspects used. One alternative method that can be used is an adaptive aspect classification method which is more flexible if there are additional new aspects used. This research aims to automate sentiment classification of tourist reviews for each aspect by developing an aspect level sentiment analysis model with an adaptive aspect classification method which will be compared with multi-label classification as a baseline method. The models used in both methods are transfer learning IndoBERT. The adaptive aspect classification method with aspect level sentiment analysis has better performance in comparison to baseline method multi-label classification with accuracy values and F1-score respectively 0.90394 and 0.71504.https://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/4585
spellingShingle Ade Rifqy Setyawan
Lya Hulliyatus Suadaa
Budi Yuniarto
Aspect-Based Sentiment Analysis using Adaptive Aspect on Tourist Reviews in Jakarta
Sistemasi: Jurnal Sistem Informasi
title Aspect-Based Sentiment Analysis using Adaptive Aspect on Tourist Reviews in Jakarta
title_full Aspect-Based Sentiment Analysis using Adaptive Aspect on Tourist Reviews in Jakarta
title_fullStr Aspect-Based Sentiment Analysis using Adaptive Aspect on Tourist Reviews in Jakarta
title_full_unstemmed Aspect-Based Sentiment Analysis using Adaptive Aspect on Tourist Reviews in Jakarta
title_short Aspect-Based Sentiment Analysis using Adaptive Aspect on Tourist Reviews in Jakarta
title_sort aspect based sentiment analysis using adaptive aspect on tourist reviews in jakarta
url https://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/4585
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AT lyahulliyatussuadaa aspectbasedsentimentanalysisusingadaptiveaspectontouristreviewsinjakarta
AT budiyuniarto aspectbasedsentimentanalysisusingadaptiveaspectontouristreviewsinjakarta