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SEM: APP Usage Prediction with Session-Based Embedding

机译:SEM:应用基于会话的嵌入式应用程序预测

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摘要

Nowadays smartphone users have installed dozens or even hundreds of APPs on their phones. Predicting APP usage not only helps the mobile phone system to speed up APP launching but also reduces the time for users to search them. In this paper, we focus on a novel session-based APP usage prediction problem that tends to predict a sequence of APPs to be used in a period. We propose a session-based embedding framework called SEM to solve the problem. To deal with the heterogeneity of APP sessions, we present a session embedding algorithm to form uniform feature representation, which alleviates the problem of user sparsity and obtains the vector representation of sessions. Based on session embedding, we train a two-layer GRU-based recursive neural network model for APP usage session prediction. Extensive experiments based on real datasets show that the proposed framework outperforms conventional APP recommendation approaches.
机译:如今,智能手机用户已经安装了几十个人或甚至数百个应用程序。预测应用程序使用不仅有助于移动电话系统加快应用程序启动,还可以减少用户搜索它们的时间。在本文中,我们专注于基于新的基于会话的应用程序使用预测问题,其倾向于预测在一段时间内使用的一系列应用程序。我们提出了一个基于会议的嵌入框架,称为SEM以解决问题。要处理应用程序会话的异构性,我们介绍了一个会话嵌入算法来形成统一的特征表示,这缓解了用户稀疏性的问题,并获得了会话的矢量表示。基于会话嵌入,我们训练一个用于APP使用会话预测的两层GRU的递归神经网络模型。基于实际数据集的广泛实验表明,所提出的框架优于传统的应用推荐方法。

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