(IJID - S3) - Fathurrohman, Afandi, Wahyuningtyas, Nugroho, Hasan [2025-01-08]

Hasan, Firman Noor (2026) (IJID - S3) - Fathurrohman, Afandi, Wahyuningtyas, Nugroho, Hasan [2025-01-08]. Sentiment Analysis on Shopee Xpress Delivery Time Reviews Using Support Vector Machine and Logistic Regression, 14 (2). pp. 640-658. ISSN 2549-7448

[thumbnail of [2026-01-08] - Fathurrohman, Afandi, Wahyuningtyas, Nugroho, Hasan  (IJID-S3).pdf] Text
[2026-01-08] - Fathurrohman, Afandi, Wahyuningtyas, Nugroho, Hasan (IJID-S3).pdf

Download (912kB)
[thumbnail of 1.  Cover.pdf] Text
1. Cover.pdf

Download (339kB)
[thumbnail of 2.  Editorial Team.pdf] Text
2. Editorial Team.pdf

Download (237kB)
[thumbnail of 3.  Daftar Isi.pdf] Text
3. Daftar Isi.pdf

Download (225kB)
[thumbnail of 4.  Artikel.pdf] Text
4. Artikel.pdf

Download (4MB)
[thumbnail of 5.  Turnitin - Similiarity Report (10%).pdf] Text
5. Turnitin - Similiarity Report (10%).pdf

Download (1MB)
Official URL: https://ejournal.uin-suka.ac.id/saintek/ijid/artic...

Abstract

This study examines user sentiment towards Shopee Xpress delivery times using machine learning techniques. We collected 497 reviews from platforms like X and the Google Play Store, leveraging the valuable feedback despite its unstructured and informal nature. After labelling 398 reviews for model training and reserving 99 for sentiment prediction, we implemented two classification algorithms: Support Vector Machine (SVM) and Logistic Regression. These models categorised sentiments into negative, neutral, and positive classes. Despite class imbalance in the training data, SVM outperformed Logistic Regression with an accuracy of 93%, demonstrating a more balanced performance across sentiment categories compared to Logistic Regression's 90% accuracy. Both models showed consistent sentiment prediction on new data. Our findings highlight the potential of sentiment analysis as a valuable tool for Shopee Xpress to understand customer perceptions and improve delivery experiences. By providing actionable insights, this study can inform logistics improvements and enhance customer satisfaction. Future research could benefit from collaborating with Shopee to access internal data and integrating additional data sources for more comprehensive insights, ultimately driving business growth and customer loyalty. This study contributes to the growing body of research on sentiment analysis in logistics and e-commerce.

Item Type: Article
Subjects: T Technology > T Technology (General)
Divisions: Fakultas Teknik > Teknik Informatika
Depositing User: Mr Firman Noor Hasan
Date Deposited: 27 Jan 2026 01:27
Last Modified: 27 Jan 2026 01:27
URI: http://repository.uhamka.ac.id/id/eprint/48664

Actions (login required)

View Item View Item