Performance Analysis of Logistic Regression and SVM (Support Vector Machine) Algorithms on E-Football Mobile Game Review Sentiment
DOI:
https://doi.org/10.65310/073zdt91Keywords:
Sentiment Analysis, E-Football, Support Vector Machine, Logistic Regression, TF IDF.Abstract
This study investigates the comparative performance of Logistic Regression and Support Vector Machine algorithms in sentiment classification of e Football mobile game reviews collected from the Google Play Store. The research employed an empirical machine learning framework involving web scraping, Natural Language Processing preprocessing, Term Frequency Inverse Document Frequency feature extraction, and supervised classification procedures. A total of 7,497 Indonesian language reviews were processed through cleaning, case folding, normalization, tokenization, stopword removal, and stemming to improve textual consistency and semantic representation. The dataset was divided into training and testing subsets using an 80:20 ratio to evaluate model generalization performance. Classification effectiveness was measured using accuracy, precision, recall, and F1 score metrics supported by confusion matrix interpretation. The findings demonstrate that Support Vector Machine achieved superior classification stability with an accuracy of 81.13% and an F1 score of 0.72, while Logistic Regression obtained an accuracy of 80.97% and an F1 score of 0.71. The results indicate that Support Vector Machine provides stronger robustness in handling high dimensional Indonesian gaming review data characterized by class imbalance and semantic variability.
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Alengka, S. G., Putra, J. L., & Setiyorini, T. (2025). Analisis Sentimen Ulasan Mobile Legend Menggunakan Algoritma Naive Bayes, SVM, Logistic Regression. Algoritme Jurnal Mahasiswa Teknik Informatika, 6(1), 175-185. https://doi.org/10.35957/algoritme.v5i3.12915
Alkhoze, M., & Almasre, M. (2025). Sentiment analysis of Mobile Legends Play Store reviews using support vector machine and naïve Bayes. Journal of Digital Market and Digital Currency, 2(4), 368-389. https://doi.org/10.47738/jdmdc.v2i4.44
An, Z. (2025). Real-Time Football Match Prediction Platform. In ITM Web of Conferences (Vol. 70, p. 04003). EDP Sciences. https://doi.org/10.1051/itmconf/20257004003
Ardine, C. F., Mandyartha, E. P., & Junaidi, A. (2025). Mobile Legends Match Outcome Prediction Based on Players Statistics Using CatBoost and XGBoost. bit-Tech, 8(2), 2400-2409. https://doi.org/10.32877/bt.v8i2.3259
Bishop, C. M. (2006). Pattern recognition and machine learning. Springer.
Budianto, A. G., Rusilawati, R., Suryo, A. T. E., Cahyono, G. R., Zulkarnain, A. F., & Martunus, M. (2024). Perbandingan Performa Algoritma Support Vector Machine (SVM) dan Logistic Regression untuk Analisis Sentimen Pengguna Aplikasi Retail di Android. Jurnal Sains dan Informatika, 10(2). https://doi.org/10.34128/jsi.v10i2.911
Caca, C. A., Hananto, A. L., Nurapriani, F., & Huda, B. (2025). Analysis of eFootball Game User Sentiment Using the Support Vector Machine (SVM) Method. Journal of Artificial Intelligence and Engineering Applications (JAIEA), 4(3), 2065-2074. https://doi.org/10.59934/jaiea.v4i3.1091
Durachman, Y., & Rahman, A. W. A. (2025). Investigating the impact of gameplay hours on player recommendations in steam games: A comparative analysis using logistic regression and random forest classifiers. International Journal Research on Metaverse, 2(1), 52-77. https://doi.org/10.47738/ijrm.v2i1.21
Emre, İ. E., & Çotul, S. E. (2026). Prediction of Player Churn in Mobile Games Using Classification Algorithms. Journal of Data Applications, (4), 20-29. https://doi.org/10.26650/JODA.1742874
Geng, B. (2025). Predicting Football Player Transfer Values Using Bagging and Hybrid Machine Learning Approaches. Informatica, 49(22). https://doi.org/10.31449/inf.v49i22.7715
Irene D, S., Beulah, J. R., K, A., & K, K. (2022). An efficient COVID-19 detection from CT images using ensemble support vector machine with Ludo game-based swarm optimisation. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization, 10(6), 675-686. https://doi.org/10.1080/21681163.2021.2024088
Jurafsky, D., & Martin, J. H. (2023). Speech and language processing: An introduction to natural language processing, computational linguistics, and speech recognition (3rd ed.). Pearson.
Kına, E., & Özdağ, R. (2024, December). Multilingual sentiment analysis for mobile gaming: A comparative study of machine learning and hybrid deep learning approaches. In SETSCI-Conference Proceedings (Vol. 21, pp. 1-5). SETSCI-Conference Proceedings. https://doi.org/10.36287/setsci.21.1.001
Kına, E., & Özdağ, R. (2025). Deep Learning vs. Machine Learning in Sentiment Classification: A Comparative Analysis of Mobile Game Tweets from the X Platform. Erzincan University Journal of Science and Technology, 18(2), 639-658. https://doi.org/10.18185/erzifbed.1667207
Klemp, M., Bassek, M., Garnica Caparros, M., Bakhtiar, L. A., & Memmert, D. (2026). The use of machine learning in performance analysis in invasion games: Umbrella review of reviews. Journal of Sports Sciences, 1-28. https://doi.org/10.1080/02640414.2026.2636863
Ma’arif, W. A., Sarwido, S., & Tamrin, T. (2026). Analisis Sentimen Terhadap Ulasan Game Mobile Legend di Playstore menggunakan Algoritma Logistic Regression. JUKI: Jurnal Komputer dan Informatika, 8(1), 43-49. https://doi.org/10.53842/juki.v8i1.2319
Maharani, V. P., Harvanny, K., Samudra, D., Muthoharoh, L., Satria, A., & Manullang, M. C. T. (2026). Sentiment Analysis of Mobile Legends App Reviews Using Machine Learning and LSTM-Based Deep Learning Models. arXiv preprint arXiv:2605.01317. https://doi.org/10.48550/arXiv.2605.01317
Manning, C. D., Raghavan, P., & Schütze, H. (2008). Introduction to information retrieval. Cambridge University Press.
Merzah, B. M., Croock, M. S., & Rashid, A. N. (2024). Intelligent classifiers for football player performance based on machine learning models. International journal of electrical and computer engineering systems, 15(2), 173-183. https://doi.org/10.32985/ijeces.15.2.6
Ponmalar, A., & Dhanakoti, V. (2022). An intrusion detection approach using ensemble support vector machine based chaos game optimization algorithm in big data platform. Applied Soft Computing, 116, 108295. https://doi.org/10.1016/j.asoc.2021.108295
Prasanna, V. L., Chowdary, E. D., Venkatramaphanikumar, S., & Kishore, K. V. K. (2025). Optimised feature selection and categorisation of medical records with multi kernel boosted support vector machine. International Journal of Advanced Intelligence Paradigms, 30(2), 152-171. https://doi.org/10.1504/IJAIP.2025.146971
Safrudin, M., Martanto, M., & Hayati, U. (2024). Perbandingan Kinerja Naïve Bayes Dan Support Vector Machine Untuk Klasifikasi Sentimen Ulasan Game Genshin Impact. JATI (Jurnal Mahasiswa Teknik Informatika), 8(3), 3182-3188. https://doi.org/10.36040/jati.v8i3.8415
Shahlaei Bagheri, J. (2024). Prediction and management of physical injuries caused by gym equipment and facilities using a Support Vector Machine (SVM) algorithm. Research in Sport Management and Marketing, 5(2), 76-86. https://doi.org/10.22098/rsmm.2024.14524.1319
Waskita, G. I., Kurniawan, H., Yudhistira, D., Mohamad, N. I. B., & Anam, M. K. (2025). The role of machine learning in modern football analytics: A systematic review of approaches and their implications. Journal of Sport and Exercise Science, 8(2), 178-186. https://doi.org/10.26740/jses.v8n2.p178-186
Yu, W. (2022). Football Result Prediction Based on Machine Learning. In Applied Mathematics, Modeling and Computer Simulation: Proceedings of AMMCS 2021 (pp. 787-791). 1 Oliver's Yard, 55 City Road, London, EC1Y 1SP: SAGE Publications. https://doi.org/10.3233/ATDE220080
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