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Abdulsalam et al., 2022 - Google Patents

A Churn Prediction System for Telecommunication Company Using Random Forest and Convolution Neural Network Algorithms.

Abdulsalam et al., 2022

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Document ID
18324349937605719143
Author
Abdulsalam S
Ajao J
Balogun B
Arowolo M
Publication year
Publication venue
EAI Endorsed Trans. Mob. Commun. Appl.

External Links

Snippet

INTRODUCTION: Customer churn is a severe problem of migrating from one service provider to another. Due to the direct influence on the company's sales, companies are attempting to promote strategies to identify the churn of prospective consumers. Hence it is …
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