Prediction of User Mobility Pattern on a Network Traffic Analysis Platform

Haiyang He, Yuanyuan Qiao, Sheng Gao, Jie Yang, Jun Guo
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引用次数: 11

Abstract

The mobile Internet brings tremendous opportunities for researchers to analyze user mobility pattern, which is of great importance for Internet Service Providers (ISP) to provide better location-based services. This paper focuses on predicting user mobility patterns based on their different mobility characteristics. For that, we collect real-world data from Long Term Evolution (LTE) mobile network by a specially developed network traffic analysis platform followed by clustering the user into stationary one or mobile one with a location-entropy-based method for distinguishing groups with distinct mobility characteristics, and then we present the tailored Intelligent Time Division (ITD) method and Time-Based Markov (TBM) predictor for the location prediction of stationary and mobile users respectively. Extensive experiments demonstrate the effectiveness and better performance of our proposed methods compared with the baselines, as well as the adaptabilities of different predictors according to individual's mobility characteristics.
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基于网络流量分析平台的用户移动模式预测
移动互联网为研究用户移动模式带来了巨大的机遇,这对互联网服务提供商提供更好的基于位置的服务具有重要意义。本文重点研究了基于不同用户移动性特征的用户移动性模式预测。为此,我们通过专门开发的网络流量分析平台收集长期演进(LTE)移动网络的真实数据,然后利用基于位置熵的方法区分具有不同移动性特征的群体,将用户聚类为固定用户和移动用户,然后分别提出了针对固定用户和移动用户的定制智能时间划分(ITD)方法和基于时间的马尔可夫(TBM)预测器。大量的实验证明了我们提出的方法与基线相比的有效性和更好的性能,以及不同预测因子根据个体流动性特征的适应性。
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Session details: Technical Session I: Mobile Offloading Session details: Keynote Address I Krowd: A Key-Value Store for Crowded Venues Future Communication Clouds sNDN: A Social-aware Named Data Framework for Cooperative Content Retrieval via D2D Communications
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