a Comparative Study of Iconnet Jabodetabek and Banten Using Linear Regression and Support Vector Regression
DOI:
10.47709/cnahpc.v6i1.3362Keywords:
Predictions, customer growth, customer data, linear regression, support vector regressionDimension Badge Record
Abstract
PT PLN Indonesia Comnets Plus has little information regarding future customer growth, making it difficult to take steps to meet customer needs. This research aims to predict customer growth in the future based on quantitative data from the previous year, where the output provided produces data in the form of numbers that are analyzed using statistical methods. The hope is to provide information to maximize customer growth with the minimum area or bandwidth used by the company. This research uses linear regression and support vector regression (SVR) algorithms using a company secondary dataset of 252 data points with 5 attributes. Data was collected during the last one-year period, from January to December 2021. The results of the research show that predictions using both algorithms have increased, customer growth when viewed from the number of customers, bandwidth, and regional data has increased significantly. This can be seen from the value of the number of customers, which continues to increase, while the highest number of customers falls in December, the most requested bandwidth is 20 mbps, and the largest customer area is in the Depok area. The results of the research show that the SVR algorithm is superior in terms of mean absolute percentage error (MAPE): 0.02% MAPE, 0.10 MAE, and 0.99 RMSE, while for linear regression, the MAPE values were 36.28%, MAE 201, and RMSE 0.80.
Downloads
Abstract viewed = 104 times
References
Anand, P., Rastogi, R., & Chandra, S. (2020). A class of new support vector regression models. Applied Soft Computing, 94, 106446.
Dewi, C., & Chen, R. C. (2019). Random forest and support vector machine on features selection for regression analysis. Int. J. Innov. Comput. Inf. Control, 15(6), 2027-2037.
Duan, Z., Liu, Y., & Huang, K. (2019, May). Mobile phone sales forecast based on support vector machine. In Journal of Physics: Conference Series (Vol. 1229, No. 1, p. 012061). IOP Publishing.
Fitrianah, D., Gunawan, W., & Sari, A. P. (2022). Studi Komparasi Algoritma Klasifikasi C5. 0, SVM dan Naive Bayes dengan Studi Kasus Prediksi Banjir. Techno. Com, 21(1), 1-11.
He, F. (2023, August). iPhone Sales Prediction Based on Multilinear Regression Model: Evidence from Statista. In 2023 IEEE International Conference on Sensors, Electronics and Computer Engineering (ICSECE) (pp. 341-346). IEEE.
Maulana, N A. The faithful b. D., and C. D. (2019). Implementation of the Support Vector Regression (SVR) Method in Bread Sales Prediction (Studi Kasus: Harum Bakery). Journal of Information Technology and Computer Science Development.
Maulud, D., & Abdulazeez, A. M. (2020). A review on linear regression comprehensive in machine learning. Journal of Applied Science and Technology Trends, 1(4), 140-147.
McKim, B., & Hughes, A. M. (2001). How to measure customer relationship management success. Journal of Database Marketing & Customer Strategy Management, 8, 224-231.
Nastiti, M. D., Abdurohman, M., & Putrada, A. G. (2019, July). Smart shopping prediction on smart shopping with linear regression method. In 2019 7th International Conference on Information and Communication Technology (ICoICT) (pp. 1-6). IEEE.
Pratama, A. D., & Noviana, W. (2023). Perancangan Sistem Informas Aplikasi E-Booking Berbasis Website Menggunakan Metode Extreme Programming Pada PT Indonesia Comnets Plus. LOGIC: Jurnal Ilmu Komputer dan Pendidikan, 1(6), 1532-1535.
R. A. The Princess W. S. Winnie and M. Mashuri, “Application of Ridge Regression and Support Vector Regresion (SVR) Method for Predicting Coal Index in PT XYZ,” J. Science and Arts ITS, vol. 9, no. 1, pp. 64–71, 2020, doi: 10.12962/j23373520.v9i1.51021.
Sandiwarno, S. (2018). Developing an E-Forum to Universitas Mercu Buana Alumni’s to Improve Effective Communication and Educative by Technology Multimedia Acceptance Model. Int. J. Comput. Sci. Mob. Comput, 7(8), 113-122.
Sianturi, D. P. S., & Sagala, J. R. (2020). Prediction of 2020 Mobile Sales Trends Using the Weighted Product Method. Journal of Intelligent Decision Support System (IDSS), 3(4), 25-36.
Wen, Z., Zhang, R., Ramamohanarao, K., & Yang, L. (2018). Scalable and fast SVM regression using modern hardware. World Wide Web, 21, 261-287.
Zhang, F., & O'Donnell, L. J. (2020). Support vector regression. In Machine learning (pp. 123-140). Academic Press.
Downloads
ARTICLE Published HISTORY
How to Cite
Issue
Section
License
Copyright (c) 2023 Muhaimin Hasanudin, Ifan Prihandi, Sifania Nazua
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.