手机社交游戏用户流失预测:基于生存组合的完整评估

Á. Periáñez, A. Saas, Anna Guitart, Colin Magne
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引用次数: 79

摘要

减少用户流失(即流失率)是许多行业面临的广泛挑战。在手机社交游戏中,减少流失率是提高玩家留存率和收益的关键。流失预测模型能够帮助我们理解玩家的忠诚度,并预测他们何时会停止玩游戏。基于这些预测,开发者可以采取一些措施留住那些更有可能流失的玩家。生存分析的重点是预测某个事件发生的时间,在我们的例子中是动荡。像回归这样的经典方法,只能在所有玩家都离开游戏时才适用。对于所有玩家来说,不完整的搅动信息的数据集是一个挑战,因为他们中的大多数人仍然与游戏有联系。这就是所谓的删减数据问题,这是数据流失的本质。审查通常是处理生存分析技术,但由于不灵活的生存统计算法,实现的准确性往往很差。相比之下,在各种科学领域日益流行的新型集成学习技术提供了高水平的预测结果。在这项工作中,我们首次在社交游戏领域开发了一个生存集成模型,该模型提供了全面的分析和准确的流失率预测。对于每个玩家,我们预测了搅动的概率作为时间的函数,这允许区分不同级别的忠诚度概况。此外,我们还评估了解释预测玩家生存时间的风险因素。我们的研究结果表明,生存集合的流失预测显著提高了传统分析(如Cox回归)的准确性和稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Churn Prediction in Mobile Social Games: Towards a Complete Assessment Using Survival Ensembles
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 inflexibility of the survival statistical algorithms, the accuracy achieved is often poor. In contrast, novel ensemble learning techniques, increasingly popular in a variety of scientific fields, provide high-class prediction results. In this work, we develop, for the first time in the social games domain, a survival ensemble model which provides a comprehensive analysis together with an accurate prediction of churn. For each player, we predict the probability of churning as function of time, which permits to distinguish various levels of loyalty profiles. Additionally, we assess the risk factors that explain the predicted player survival times. Our results show that churn prediction by survival ensembles significantly improves the accuracy and robustness of traditional analyses, like Cox regression.
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