For a business to succeed, customer loyalty is crucial. The retention of loyal customers is a primary goal for any business. The success of companies, which rely on recurring revenue, depends on keeping their customers happy. Costs to acquire new customers are high. Super costly. This makes retaining them essential, regardless of the size of your market. Attempting to out-acquire a rising churn rate is futile. The importance of knowing the meaning of the word "loyalty" becomes clear when a company’s success hinges on it. The recent progress made in representation learning provides an opportunity to streamline and generalize feature engineering for all kinds of different applications. This study uses a real-world telecom dataset to predict customer churn and suggests using boosting to improve existing models. In this research, a feature set optimized LSTM is proposed to predict telecom customer churn on Telecom dataset. To ensure maximum profit, we also offer some marketing strategies in line with the clustering results and simulate a simplified marketing activity.
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Research Article|
August 03 2024
Modeling and customer churn prediction using deep learning
Gayathri Sundaram;
Gayathri Sundaram
a)
1
Department of Computer Science and Engineering, Jerusalem College of Engineering
, Chennai-600100, India
a)Corresponding Author: [email protected]
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Venkateswar Reddy;
Venkateswar Reddy
b)
2
Department of Information Technology, Hindustan Institute of Technology and Science Chennai
, India
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Thirupathi Reddy;
Thirupathi Reddy
c)
2
Department of Information Technology, Hindustan Institute of Technology and Science Chennai
, India
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Rakesh Reddy
Rakesh Reddy
d)
2
Department of Information Technology, Hindustan Institute of Technology and Science Chennai
, India
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Gayathri Sundaram
1,a)
Venkateswar Reddy
2,b)
Thirupathi Reddy
2,c)
Rakesh Reddy
2,d)
1
Department of Computer Science and Engineering, Jerusalem College of Engineering
, Chennai-600100, India
2
Department of Information Technology, Hindustan Institute of Technology and Science Chennai
, India
a)Corresponding Author: [email protected]
AIP Conf. Proc. 3044, 020006 (2024)
Citation
Gayathri Sundaram, Venkateswar Reddy, Thirupathi Reddy, Rakesh Reddy; Modeling and customer churn prediction using deep learning. AIP Conf. Proc. 5 August 2024; 3044 (1): 020006. https://doi.org/10.1063/5.0208736
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