In telecommunication industries, as customers have the alternative of deciding on from numerous telecom groups,they should effortlessly circulate from one provider to another. On this kind of an extremely aggressive marketplace, telecom organizations have an average client churn price of 10-20% every yr, that’s drastically excessive. as the expenses of acquiring a new patron is simply too a good deal extra in comparison to that of retaining a cutting-edge client, retaining high worthwhile customers is a critical enterprise cause. Due to the direct impact on the income of the businesses, they are looking for out a means to expect customers who are expected to depart. So, this paper, the statistics of customers of a telecom organization is tested, and predictive models have been made to recognize the clients at high hazard of churn.
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8 July 2024
INTERNATIONAL CONFERENCE ON EMERGING TRENDS IN ELECTRONICS AND COMMUNICATION ENGINEERING - 2023
15–17 April 2023
Nandyala, India
Research Article|
July 08 2024
The customer churn prediction using machine learning
V. Geetha;
V. Geetha
a)
Sri Chandrasekharendra Saraswathi Viswa Mahavidyalaya (SCSVMV)
, Kanchipuram, Tamil Nadu, India
a)Corresponding author: [email protected]
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C. K. Gomathy;
C. K. Gomathy
b)
Sri Chandrasekharendra Saraswathi Viswa Mahavidyalaya (SCSVMV)
, Kanchipuram, Tamil Nadu, India
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C. Sai Ganesh;
C. Sai Ganesh
Sri Chandrasekharendra Saraswathi Viswa Mahavidyalaya (SCSVMV)
, Kanchipuram, Tamil Nadu, India
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S. Aravind
S. Aravind
Sri Chandrasekharendra Saraswathi Viswa Mahavidyalaya (SCSVMV)
, Kanchipuram, Tamil Nadu, India
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a)Corresponding author: [email protected]
AIP Conf. Proc. 3028, 020016 (2024)
Citation
V. Geetha, C. K. Gomathy, C. Sai Ganesh, S. Aravind; The customer churn prediction using machine learning. AIP Conf. Proc. 8 July 2024; 3028 (1): 020016. https://doi.org/10.1063/5.0212569
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