2022
DOI: 10.18280/ria.360304
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Churn Prediction Model Improvement Using Automated Machine Learning with Social Network Parameters

Abstract: Due to strong competition in the telecom market, telecom companies are facing customer churn problems. For telecom, it is very important to predict the churn of a user to be able to prevent it. Marketing campaigns can be used to prevent churn and thus prevent a decrease in revenue. Usually, the churn prediction is based on behavioural user data, which describes user activity and general user data. In our prediction model, we added social network attributes that describe the social influence of other users on t… Show more

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Cited by 2 publications
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