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Inductive Representation Learning on Feature Rich Complex Networks for Churn Prediction in Telco

机译:电感归因表学习富有复杂网络的潮流预测

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In the mobile telecommunication industry, call networks have been used with great success to predict customer churn. These social networks are complex and rich in features, because the telecommunications operators have a lot of information about their customers. In this paper we leverage a novel framework called GraphSAGE for inductive representation learning on networks with the goal of predicting customer churn. The technique has an advantage over previously proposed representation learning techniques because it leverages node features in the learning process. It also features a supervised learning process, which can be used to predict churn directly, as well as an unsupervised variant which produces an embedding. We study how the number of node features impacts the predictive performance of churn models as well as the benefit of a complete learning process, compared to an embedding with supervised machine learning techniques. Finally, we compare the performance of GraphSAGE to that of standard local models.
机译:在移动电信行业中,呼叫网络已经取得了巨大的成功来预测客户流失。这些社交网络具有复杂和丰富的功能,因为电信运营商有很多关于客户的信息。在本文中,我们利用一个名为GraphSage的新框架,以便在网络上进行归纳表示学习,以预测客户流失。该技术具有超过先前提出的表示学习技术的优点,因为它利用了学习过程中的节点特征。它还具有监督的学习过程,可用于预测直接流失,以及不经过嵌入的无监督变量。我们研究节点功能的数量如何影响流失模型的预测性能以及与具有监督机器学习技术的嵌入相比的完全学习过程的益处。最后,我们将GraphSage的性能与标准本地模型的性能进行比较。

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