A churn prediction dataset from the telecom sector: a new benchmark for uplift modeling

December 12, 2023 ยท Declared Dead ยท ๐Ÿ› PKDD/ECML Workshops

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Authors Thรฉo Verhelst, Denis Mercier, Jeevan Shrestha, Gianluca Bontempi arXiv ID 2312.07206 Category cs.LG: Machine Learning Citations 2 Venue PKDD/ECML Workshops Last Checked 4 months ago
Abstract
Uplift modeling, also known as individual treatment effect (ITE) estimation, is an important approach for data-driven decision making that aims to identify the causal impact of an intervention on individuals. This paper introduces a new benchmark dataset for uplift modeling focused on churn prediction, coming from a telecom company in Belgium, Orange Belgium. Churn, in this context, refers to customers terminating their subscription to the telecom service. This is the first publicly available dataset offering the possibility to evaluate the efficiency of uplift modeling on the churn prediction problem. Moreover, its unique characteristics make it more challenging than the few other public uplift datasets.
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