A Text Mining Approach to Analyzing the Omnichannel Retail Business Performance of the KlikIndomaret App

The evolution of Web 2.0 technology has significantly influenced the use of Android applications, enabling users to provide feedback through reviews and star ratings. In managing omnichannel retail businesses, this user-generated content serves as a valuable source of information for performance ev...

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Main Authors: Akhmad Ghiffary Budianto, Arief Trisno Eko Suryo, Andry Fajar Zulkarnain, Gunawan Rudi Cahyono, Rusilawati Rusilawati, Siti Fatimah Az-Zahra
Format: Article
Language:English
Published: Petra Christian University 2024-08-01
Series:Jurnal Teknik Industri
Subjects:
Online Access:https://jurnalindustri.petra.ac.id/index.php/ind/article/view/28203
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author Akhmad Ghiffary Budianto
Arief Trisno Eko Suryo
Andry Fajar Zulkarnain
Gunawan Rudi Cahyono
Rusilawati Rusilawati
Siti Fatimah Az-Zahra
author_facet Akhmad Ghiffary Budianto
Arief Trisno Eko Suryo
Andry Fajar Zulkarnain
Gunawan Rudi Cahyono
Rusilawati Rusilawati
Siti Fatimah Az-Zahra
author_sort Akhmad Ghiffary Budianto
collection DOAJ
description The evolution of Web 2.0 technology has significantly influenced the use of Android applications, enabling users to provide feedback through reviews and star ratings. In managing omnichannel retail businesses, this user-generated content serves as a valuable source of information for performance evaluation and strategic management of both online and offline operations. Large-scale user review data is well-suited for analysis through text mining, particularly in sentiment analysis, when combined with topic and keyword filtering in the business domain. This study utilizes the RoBERTa Transformer model for the sentiment classification of user reviews. Among the 520 user reviews, 211 displayed good emotion, while 309 showed negative sentiment. By applying filtering processes to topics and keywords within the omnichannel retail business domain, the study identifies "economic value" and "delivery and CRM" as priority areas for improvement. This conclusion is drawn based on the significant disparity between positive and negative sentiments. As a result, management can formulate strategies to enhance the performance and user experience of the KlikIndomaret Android application.
format Article
id doaj-art-bff9a6dd79a54d89b0435fad3d0b6f78
institution Kabale University
issn 1411-2485
2087-7439
language English
publishDate 2024-08-01
publisher Petra Christian University
record_format Article
series Jurnal Teknik Industri
spelling doaj-art-bff9a6dd79a54d89b0435fad3d0b6f782025-01-08T03:19:56ZengPetra Christian UniversityJurnal Teknik Industri1411-24852087-74392024-08-0126210.9744/jti.26.2.131-144A Text Mining Approach to Analyzing the Omnichannel Retail Business Performance of the KlikIndomaret AppAkhmad Ghiffary Budianto0Arief Trisno Eko Suryo1Andry Fajar Zulkarnain2Gunawan Rudi Cahyono3Rusilawati Rusilawati4Siti Fatimah Az-Zahra5Universitas Lambung MangkuratUniversitas Lambung MangkuratUniversitas Lambung MangkuratUniversitas Lambung MangkuratUniversitas Lambung MangkuratUniversitas Lambung Mangkurat The evolution of Web 2.0 technology has significantly influenced the use of Android applications, enabling users to provide feedback through reviews and star ratings. In managing omnichannel retail businesses, this user-generated content serves as a valuable source of information for performance evaluation and strategic management of both online and offline operations. Large-scale user review data is well-suited for analysis through text mining, particularly in sentiment analysis, when combined with topic and keyword filtering in the business domain. This study utilizes the RoBERTa Transformer model for the sentiment classification of user reviews. Among the 520 user reviews, 211 displayed good emotion, while 309 showed negative sentiment. By applying filtering processes to topics and keywords within the omnichannel retail business domain, the study identifies "economic value" and "delivery and CRM" as priority areas for improvement. This conclusion is drawn based on the significant disparity between positive and negative sentiments. As a result, management can formulate strategies to enhance the performance and user experience of the KlikIndomaret Android application. https://jurnalindustri.petra.ac.id/index.php/ind/article/view/28203Text miningSentiment analysisOmnichannelTransformerWeb scrapping
spellingShingle Akhmad Ghiffary Budianto
Arief Trisno Eko Suryo
Andry Fajar Zulkarnain
Gunawan Rudi Cahyono
Rusilawati Rusilawati
Siti Fatimah Az-Zahra
A Text Mining Approach to Analyzing the Omnichannel Retail Business Performance of the KlikIndomaret App
Jurnal Teknik Industri
Text mining
Sentiment analysis
Omnichannel
Transformer
Web scrapping
title A Text Mining Approach to Analyzing the Omnichannel Retail Business Performance of the KlikIndomaret App
title_full A Text Mining Approach to Analyzing the Omnichannel Retail Business Performance of the KlikIndomaret App
title_fullStr A Text Mining Approach to Analyzing the Omnichannel Retail Business Performance of the KlikIndomaret App
title_full_unstemmed A Text Mining Approach to Analyzing the Omnichannel Retail Business Performance of the KlikIndomaret App
title_short A Text Mining Approach to Analyzing the Omnichannel Retail Business Performance of the KlikIndomaret App
title_sort text mining approach to analyzing the omnichannel retail business performance of the klikindomaret app
topic Text mining
Sentiment analysis
Omnichannel
Transformer
Web scrapping
url https://jurnalindustri.petra.ac.id/index.php/ind/article/view/28203
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