Comparative Sentiment Analysis of Digital Wallet Applications in
Indonesia Using Naïve Bayes
Dublin Core
Title
Comparative Sentiment Analysis of Digital Wallet Applications in
Indonesia Using Naïve Bayes
Indonesia Using Naïve Bayes
Subject
Sentiment Analysis, Digital Wallet, Naïve Bayes, User Reviews, E-Wallet, Indonesia, TF-IDF
Description
The rapid growth of financial technology in Indonesia has led to widespread use of digital wallet applications such as OVO, DANA, GoPay, and
ShopeePay. User-generated reviews on platforms like the Google Play Store offer valuable insights into customer satisfaction and application
performance. This study conducts a comparative sentiment analysis of user reviews for four major Indonesian e-wallets using the Multinomial
Naïve Bayes algorithm. A total of 401 Indonesian-language reviews were collected and labeled based on user ratings, with sentiment classified
as positive or negative. The TF-IDF method was applied for feature extraction, and the model was evaluated using accuracy, precision, and recall
metrics. Results show that ShopeePay achieved the highest classification accuracy (89%), followed by DANA and GoPay (80%), while OVO
recorded lower performance due to more informal and ambiguous language. The model demonstrated strong precision for positive sentiment but
low recall for negative sentiment (28%), indicating challenges in detecting minority-class feedback. Word cloud visualizations were used to
highlight common keywords in each sentiment category. This study confirms that Naïve Bayes is an effective approach for classifying user
sentiment in Indonesian-language app reviews, while also emphasizing the need for improved handling of class imbalance in future research. The
findings provide practical insights for developers to enhance user experience based on data-driven sentiment patterns.
ShopeePay. User-generated reviews on platforms like the Google Play Store offer valuable insights into customer satisfaction and application
performance. This study conducts a comparative sentiment analysis of user reviews for four major Indonesian e-wallets using the Multinomial
Naïve Bayes algorithm. A total of 401 Indonesian-language reviews were collected and labeled based on user ratings, with sentiment classified
as positive or negative. The TF-IDF method was applied for feature extraction, and the model was evaluated using accuracy, precision, and recall
metrics. Results show that ShopeePay achieved the highest classification accuracy (89%), followed by DANA and GoPay (80%), while OVO
recorded lower performance due to more informal and ambiguous language. The model demonstrated strong precision for positive sentiment but
low recall for negative sentiment (28%), indicating challenges in detecting minority-class feedback. Word cloud visualizations were used to
highlight common keywords in each sentiment category. This study confirms that Naïve Bayes is an effective approach for classifying user
sentiment in Indonesian-language app reviews, while also emphasizing the need for improved handling of class imbalance in future research. The
findings provide practical insights for developers to enhance user experience based on data-driven sentiment patterns.
Creator
Soeltan Abdul Ghaffar1,*, Wilbert Clarence Setiawan2
Source
https://ijiis.org/index.php/IJIIS/article/view/251/159
Publisher
Universitas Pendidikan Indonesia,
Date
march 2025
Contributor
Fajar bagus W
Format
PDF
Language
English
Type
Text
Files
Collection
Citation
Soeltan Abdul Ghaffar1,*, Wilbert Clarence Setiawan2, “Comparative Sentiment Analysis of Digital Wallet Applications in
Indonesia Using Naïve Bayes,” Repository Horizon University Indonesia, accessed January 1, 2026, https://repository.horizon.ac.id/items/show/9727.
Indonesia Using Naïve Bayes,” Repository Horizon University Indonesia, accessed January 1, 2026, https://repository.horizon.ac.id/items/show/9727.