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Clustering and predicting the data usage patterns of geographically diverse mobile users

机译:聚类和预测地理位置不同移动用户的数据使用模式

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Mobile users demand more and more data traffic, yet network resources are limited. This creates a challenge for network resource management. One way of addressing this challenge is by understanding the data usage patterns of mobile users so that resources can be optimally allocated based on user traffic demand and data usage behavior. However, understanding and characterizing the data usage patterns of mobile users is a complex task. In this work, we investigate and characterize users' data usage patterns and behavior in mobile networks. We leverage a dataset (similar to 113 million records) collected through a crowd-based mobile network measurement platform - Netradar - across five countries. Data usage behavior of users over a cellular network is primarily driven by user mobility, the type of subscription plan marketed by Mobile Network Operators (MNOs), network congestion, and network coverage. We apply an unsupervised machine learning approach to cluster mobile user types by considering different factors such as data consumption, network access type, the number of sessions created per user, throughput, and mobility. By defining data usage pattern of mobile users, we develop a user clustering model and identify three different mobile user groups (clusters). Our clustering model shows that the data usage patterns are unevenly distributed across the five countries studied, characterized by a small number of heavy users consuming the highest volume of data. We show how the types of applications installed by users correlate with data consumption patterns in some countries. Heavy users tend to install more traffic-demanding apps than users from the other two groups - regular and light users. Finally, we trained a classification model using the labeled dataset produced by our aforementioned user clustering method. The model helps classifying mobile users according to their usage patterns (i.e., heavy, regular, and light) with an accuracy of similar to 80% in the test dataset.
机译:移动用户需求越来越多的数据流量,但网络资源有限。这为网络资源管理创造了挑战。解决这一挑战的一种方法是通过了解移动用户的数据使用模式,使得可以基于用户业务需求和数据使用行为来最佳地分配资源。但是,了解和表征移动用户的数据使用模式是一个复杂的任务。在这项工作中,我们在移动网络中调查和描述用户的数据使用模式和行为。我们利用通过基于人群的移动网络测量平台 - Netradar - 跨越五个国家收集的数据集(类似于11300万条记录)。用户通过蜂窝网络的数据使用行为主要由用户移动性,由移动网络运营商(MNOS),网络拥塞和网络覆盖销售的订阅计划的类型。我们通过考虑数据消耗,网络访问类型,每个用户,吞吐量和移动性的会话数等不同的因素来应用无监督的机器学习方法来纳入群集移动用户类型。通过定义移动用户的数据使用模式,我们开发用户群集模型并识别三个不同的移动用户组(群集)。我们的聚类模型显示数据使用模式在研究的五个国家分布不均匀,其特征在于少量少量消耗最高量的数据。我们展示了用户安装的应用程序类型如何与某些国家/地区的数据消费模式相关联。沉重的用户倾向于从其他两组的用户安装更多的交通苛刻应用程序 - 常规和轻描用户。最后,我们使用我们上述用户群集方法产生的标记数据集进行了分类模型。该模型有助于根据其使用模式(即,重,常规和光)来对移动用户进行分类,精度在测试数据集中的80%。

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