Enhanced Churn Prediction in the Telecommunication Industry

International Journal of Innovative Research in Computer Science & Technology (IJIRCST), Volume-8, Issue-2, March 2020

10 Pages Posted: 11 May 2020

See all articles by Adeniyi Ben

Adeniyi Ben

Department of Computer Science (Project Management Option), Babcock University, Illsan-Remo, Nigeria

Date Written: March 31, 2020

Abstract

Prediction models are usually built by applying a supervised learning algorithm to historical data. This involves the use of data analytics system that uses real-time integration and dynamic real time responses data to detect churn risks. Subscribe are increasingly terminating their membership agreement with telecommunication companies through mobile number portability (MNP) in order to subscribe to another competitor companies. To model the Customer prediction, a Markov Chain Model will be used. The Markov model allows for more flexibility than most other potential models, and can incorporate variables such as non-constant retention rate, which is not possible in the simpler models. The model allows looking at individual customer relationships as well as averages, and its probabilistic nature makes the uncertainty apprehensible. The Markov Decision Process is also appealing, but since dynamic decisions along the lifetime of the customer will not be evaluated the Markov Chain is the simplest model that still meets the requirements. Each state in the Markov Chain will represent a person being a customer for one month, with an infinite number of states. The transition probability to move from one state to the next is equivalent to a customer retaining with the operator to the next month. A customer that has churned will be considered lost forever.Once the retention and churn rates are determined, the reference churn value for each customer will be computed. The churn rate will be calculated using MATLAB Monte Carlo simulations, running a large number of fictitious customer-company relationship processes, and extracting the results of the average customer.

Keywords: Prediction Models, mobile number portability,Markov Decision Process, churn rate

Suggested Citation

Ben, Adeniyi, Enhanced Churn Prediction in the Telecommunication Industry (March 31, 2020). International Journal of Innovative Research in Computer Science & Technology (IJIRCST), Volume-8, Issue-2, March 2020, Available at SSRN: https://ssrn.com/abstract=3577712 or http://dx.doi.org/10.2139/ssrn.3577712

Adeniyi Ben (Contact Author)

Department of Computer Science (Project Management Option), Babcock University, Illsan-Remo, Nigeria ( email )

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