Please use this identifier to cite or link to this item: http://repository.kln.ac.lk/handle/123456789/27342
Title: Defaulter Prediction in the Fixed-line Telecommunication Sector Using Machine Learning
Authors: Ginige, Sachini
Rajapakse, Chathura
Asanka, Dinesh
Mahanama, Thilini
Keywords: defaulter prediction, machine learning, fixed-line telecommunication
Issue Date: 2023
Publisher: Department of Industrial Management, Faculty of Science, University of Kelaniya Sri Lanka
Citation: Ginige Sachini; Rajapakse Chathura; Asanka Dinesh; Mahanama Thilini (2023). Defaulter Prediction in the Fixed-line Telecommunication Sector Using Machine Learning, International Research Conference on Smart Computing and Systems Engineering (SCSE 2023), Department of Industrial Management, Faculty of Science, University of Kelaniya Sri Lanka. Page 4
Abstract: In the modern connected era, the telecommunications sector plays a critical role in enabling efficient business operations across all industries. However, defaulting customers who fail to pay their dues after consuming services remain a significant challenge in the industry. Defaulters pose a risk to service providers, calling for measures to lessen both the probability of occurrence as well as its impact. Early identification of defaulters through prediction is a possible solution that enables proactive measures to mitigate the risk. However, the nature of the fixed-line product segment poses additional constraints in identifying defaulters, highlighting an existing knowledge gap. The research aims to evaluate the effectiveness of machine learning as a technique for the prediction of defaulters in the fixed-line telecommunication sector, and to develop an effective predictive model for the purpose. The success of machine learning techniques in analysis and prediction over traditional methods prompted its use in this study. The study followed the design science research methodology. An analysis was conducted based on past transaction data. Special consideration was given to the scenario of customers with little to no transaction history. Based on the analysis, a feature list for identifying defaulters was compiled, and multiple predictive models were developed and evaluated in comparison. The resulting predictive model, which uses the Random Forest technique, shows high performance in all considered aspects. The findings of the study demonstrate that machine learning techniques can effectively predict defaulters in the fixed-line telecommunication sector, with significant implications for mitigating the risk associated.
URI: http://repository.kln.ac.lk/handle/123456789/27342
Appears in Collections:Smart Computing and Systems Engineering - 2023 (SCSE 2023)

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