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Utilizing Players' Playtime Records for Churn Prediction: Mining Playtime Regularity

15 December 2019
Wanshan Yang
Ting Huang
Junlin Zeng
Lijun Chen
Shivakant Mishra
Youjian
Yi Liu
ArXiv (abs)PDFHTML
Abstract

In the free online game industry, churn prediction is an important research topic. Reducing the churn rate of a game significantly helps with the success of the game. Churn prediction helps a game operator identify possible churning players and keep them engaged in the game via appropriate operational strategies, marketing strategies, and/or incentives. Playtime related features are some of the widely used universal features for most churn prediction models. In this paper, we consider developing new universal features for churn predictions for long-term players based on players' playtime.

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