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Detection of Churned and Retained Users with Machine Learning Methods for Mobile Applications

机译:使用机器学习方法检测移动用户的流失和保留用户

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This study aims to find the different behavior patterns of churned and retained mobile application users using machine learning approach. The data for this study is gathered from the users of a mobile application (iPhone & Android). As a machine learning classifier Support Vector Machines (SVM) are used for evaluating in the detection of churned and retained users. Several features are extracted from user data to discriminate different user behaviors. Successful results are obtained and user behaviors are classified with 93% and 98% accuracy. From the diversity perspective, results of this study can be used to evaluate the differences of churned and retained users in terms of diverse user groups.
机译:本研究旨在使用机器学习方法找到搅动和保留的移动应用程序用户的不同行为模式。这项研究的数据是从移动应用程序(iPhone和Android)的用户那里收集的。作为一种机器学习分类器,支持向量机(SVM)用于评估搅动和保留用户的检测。从用户数据中提取了几个功能,以区分不同的用户行为。获得了成功的结果,并以93%和98%的准确性对用户行为进行了分类。从多样性的角度来看,本研究的结果可用于评估在不同用户群体方面搅动和保留用户的差异。

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