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Conditional Log-linear Models for Mobile Application Usage Prediction

机译:移动应用使用情况预测的条件对数线性模型

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Over the last decade, mobile device usage has evolved rapidly from basic calling and texting to primarily using applications. On average, smartphone users have tens of applications installed in their devices. As the number of installed applications grows, finding a right application at a particular moment is becoming more challenging. To alleviate the problem, we study the task of predicting applications that a user is most likely going to use at a given situation. We formulate the prediction task with a conditional log-linear model and present an online learning scheme suitable for resource-constrained mobile devices. Using real-world mobile application usage data, we evaluate the performance and the behavior of the proposed solution against other prediction methods. Based on our experimental evaluation, the proposed approach offers competitive prediction performance with moderate resource needs.
机译:在过去的十年中,移动设备的使用已从基本的呼叫和发短信迅速发展到主要使用应用程序。平均而言,智能手机用户在其设备中安装了数十个应用程序。随着已安装应用程序数量的增加,在特定时刻查找合适的应用程序变得越来越具有挑战性。为了缓解该问题,我们研究了预测用户在给定情况下最有可能使用的应用程序的任务。我们用条件对数线性模型来制定预测任务,并提出一种适用于资源受限的移动设备的在线学习方案。使用实际的移动应用程序使用情况数据,我们对照其他预测方法评估了提出的解决方案的性能和行为。根据我们的实验评估,所提出的方法可提供具有适度资源需求的竞争性预测性能。

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