A comparative study of customer churn prediction in telecom industry using ensemble based classifiers

Published: Nov 1, 2017
Abstract
Churn Prediction plays a vital role in various domains like life insurance, banking and telecom industry. With the current advancement in Machine Learning and Artificial Intelligence, Churn Prediction is more realistic and accurate. It is very much essential for early stage detection of customers who are at high risk of leaving the company or services. In this paper, Ensemble based Classifiers namely Bagging, Boosting and Random Forest were...
Paper Details
Title
A comparative study of customer churn prediction in telecom industry using ensemble based classifiers
Published Date
Nov 1, 2017
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