Prediction of user app usage behavior from geo-spatial data

Xiao-Xing Zhao, Yuanyuan Qiao, Zhongwei Si, Jie Yang, Anders Lindgren
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引用次数: 12

Abstract

In the era of mobile Internet, a vast amount of geo-spatial data allows us to gain further insights into human activities, which is critical for Internet Services Providers (ISP) to provide better personalized services. With the pervasiveness of mobile Internet, much evidence show that human mobility has heavy impact on app usage behavior. In this paper, we propose a method based on machine learning to predict users' app usage behavior using several features of human mobility extracted from geo-spatial data in mobile Internet traces. The core idea of our method is selecting a set of mobility attributes (e.g. location, travel pattern, and mobility indicators) that have large impact on app usage behavior and inputting them into a classification model. We evaluate our method using real-world network traffic collected by our self-developed high-speed Traffic Monitoring System (TMS). Our prediction method achieves 90.3% accuracy in our experiment, which verifies the strong correlation between human mobility and app usage behavior. Our experimental results uncover a big potential of geo-spatial data extracted from mobile Internet.
根据地理空间数据预测用户应用程序的使用行为
在移动互联网时代,海量的地理空间数据可以让我们更深入地了解人类活动,这对于互联网服务提供商(ISP)提供更好的个性化服务至关重要。随着移动互联网的普及,大量证据表明,人类的移动性对应用程序的使用行为产生了重大影响。在本文中,我们提出了一种基于机器学习的方法,利用从移动互联网痕迹的地理空间数据中提取的人类移动性的几个特征来预测用户的应用程序使用行为。我们方法的核心思想是选择一组对应用使用行为影响较大的移动性属性(如位置、出行模式、移动性指标),并将其输入到分类模型中。我们使用我们自己开发的高速流量监控系统(TMS)收集的真实网络流量来评估我们的方法。我们的预测方法在我们的实验中达到了90.3%的准确率,验证了人类移动性与应用程序使用行为之间的强相关性。我们的实验结果揭示了从移动互联网中提取地理空间数据的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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