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A Hazard Based Approach to User Return Time Prediction

机译:基于危害的用户返回时间预测方法

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In the competitive environment of the internet, retaining and growing one's user base is of major concern to most web services. Furthermore, the economic model of many web services is allowing free access to most content, and generating revenue through advertising. This unique model requires securing user time on a site rather than the purchase of good which makes it crucially important to create new kinds of metrics and solutions for growth and retention efforts for web services. In this work, we address this problem by proposing a new retention metric for web services by concentrating on the rate of user return. We further apply predictive analysis to the proposed retention metric on a service, as a means for characterizing lost customers. Finally, we set up a simple yet effective framework to evaluate a multitude of factors that contribute to user return. Specifically, we define the problem of return time prediction for free web services. Our solution is based on the Cox's proportional hazard model from survival analysis. The hazard based approach offers several benefits including the ability to work with censored data, to model the dynamics in user return rates, and to easily incorporate different types of covariates in the model. We compare the performance of our hazard based model in predicting the user return time and in categorizing users into buckets based on their predicted return time, against several baseline regression and classification methods and find the hazard based approach to be superior.
机译:在互联网的竞争环境中,保留和扩大用户基础是大多数Web服务的主要关注点。此外,许多Web服务的经济模式是允许免费访问大多数内容,并通过广告产生收入。这种独特的模型要求确保用户在网站上的时间,而不是购买商品,这使得为Web服务的增长和保留工作创建新的指标和解决方案至关重要。在这项工作中,我们通过集中于用户返回率为Web服务提出了新的保留指标来解决此问题。我们将预测分析进一步应用于建议的服务保留率指标,以此来表征失去的客户。最后,我们建立了一个简单而有效的框架来评估影响用户返回的众多因素。具体来说,我们定义了免费Web服务的返回时间预测问题。我们的解决方案基于生存分析中的Cox比例风险模型。基于危害的方法提供了许多好处,包括使用审查的数据,对用户返回率的动态进行建模以及将不同类型的协变量轻松纳入模型的能力。我们比较了基于危害的模型在预测用户返回时间以及基于用户的预测返回时间将用户分类到存储桶中的性能,并与几种基准回归和分类方法进行了比较,发现基于危害的方法是更好的。

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