Churn Prediction in Mobile Social Games: Towards a Complete Assessment Using Survival Ensembles
\'Africa Peri\'a\~nez, Alain Saas, Anna Guitart, Colin Magne

TL;DR
This paper introduces a novel survival ensemble model for predicting player churn in mobile social games, improving accuracy over traditional methods and providing detailed loyalty profiles and risk factors.
Contribution
It is the first application of survival ensemble techniques to social game churn prediction, offering a more accurate and comprehensive analysis of player retention.
Findings
Survival ensembles outperform Cox regression in accuracy.
The model provides detailed player loyalty profiles.
Risk factors influencing churn are identified.
Abstract
Reducing user attrition, i.e. churn, is a broad challenge faced by several industries. In mobile social games, decreasing churn is decisive to increase player retention and rise revenues. Churn prediction models allow to understand player loyalty and to anticipate when they will stop playing a game. Thanks to these predictions, several initiatives can be taken to retain those players who are more likely to churn. Survival analysis focuses on predicting the time of occurrence of a certain event, churn in our case. Classical methods, like regressions, could be applied only when all players have left the game. The challenge arises for datasets with incomplete churning information for all players, as most of them still connect to the game. This is called a censored data problem and is in the nature of churn. Censoring is commonly dealt with survival analysis techniques, but due to the…
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