Predicting base station return on investment in the telecommunications industry: Machine-learning approaches

Q1 Economics, Econometrics and Finance Intelligent Systems in Accounting, Finance and Management Pub Date : 2023-03-07 DOI:10.1002/isaf.1530
Cihan Şahin
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Abstract

Investment in the right location ensures sustainable competition. In the telecommunication sector, the number of base stations (BSs) is one of the most significant investment parameters. When a potential BS is subject to be selected, practitioners will first consider investing in a BS where the return on investment (ROI) is highest. Therefore, the quantifiable objectives are distinctly defined, as it makes sense to choose maximizing features that raise per unit investment. This study provides a solution to evaluate the best BS installation alternative with machine-learning approaches as well as to estimate ROI value by changing the properties that affect the ROI value. For this purpose, the estimation performance of logistic regression, random forest, and XGBoost methods are compared and further strengthened by random forest hyperparameter optimization to provide the best performance. The model, with a success rate of 98.7% according to the F-score, showed that it was a robust algorithm. The three most essential features for the ROI value are determined to be voice traffic, data traffic, and frequency cost. These parameters enable a review of the prediction results of telecommunications managers and planning specialists responsible for BS investment.

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预测基站在电信行业的投资回报率:机器学习方法
在合适的地点进行投资可确保可持续竞争。在电信行业,基站的数量是最重要的投资参数之一。当选择潜在的BS时,从业者将首先考虑投资于投资回报率(ROI)最高的BS。因此,可量化的目标是明确定义的,因为选择最大限度地提高单位投资的特征是有意义的。本研究提供了一种解决方案,可以通过机器学习方法评估最佳BS安装方案,并通过改变影响ROI值的属性来估计ROI值。为此,对逻辑回归、随机森林和XGBoost方法的估计性能进行了比较,并通过随机森林超参数优化进一步加强,以提供最佳性能。根据F评分,该模型的成功率为98.7%,表明它是一个稳健的算法。ROI值的三个最基本的特征被确定为语音流量、数据流量和频率成本。这些参数使得能够审查负责BS投资的电信经理和规划专家的预测结果。
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来源期刊
Intelligent Systems in Accounting, Finance and Management
Intelligent Systems in Accounting, Finance and Management Economics, Econometrics and Finance-Finance
CiteScore
6.00
自引率
0.00%
发文量
0
期刊介绍: Intelligent Systems in Accounting, Finance and Management is a quarterly international journal which publishes original, high quality material dealing with all aspects of intelligent systems as they relate to the fields of accounting, economics, finance, marketing and management. In addition, the journal also is concerned with related emerging technologies, including big data, business intelligence, social media and other technologies. It encourages the development of novel technologies, and the embedding of new and existing technologies into applications of real, practical value. Therefore, implementation issues are of as much concern as development issues. The journal is designed to appeal to academics in the intelligent systems, emerging technologies and business fields, as well as to advanced practitioners who wish to improve the effectiveness, efficiency, or economy of their working practices. A special feature of the journal is the use of two groups of reviewers, those who specialize in intelligent systems work, and also those who specialize in applications areas. Reviewers are asked to address issues of originality and actual or potential impact on research, teaching, or practice in the accounting, finance, or management fields. Authors working on conceptual developments or on laboratory-based explorations of data sets therefore need to address the issue of potential impact at some level in submissions to the journal.
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