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Predicting the Users’ Next Location From WLAN Mobility Data

机译:通过WLAN移动数据预测用户的下一个位置

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Accurate prediction of user mobility allows the efficient use of resources in our ubiquitously connected environment. In this work we study the predictability of the users’ next location, considering a campus scenario with highly mobile users. We utilize Markov predictors, and estimate the theoretical predictability limits. Based on the mobility traces of nearly 7400 wireless network users, we estimate that the maximum predictability of the users is on average 82%, and we find that the best Markov predictor is accurate 67% of the time. In addition, we show that moderate performance gains can be achieved by leveraging multi-location prediction.
机译:准确预测用户移动性可以在我们无处不在的连接环境中有效利用资源。在这项工作中,我们考虑到用户流动性很高的校园场景,研究了用户下一个位置的可预测性。我们利用马尔可夫预测变量,并估计理论上的可预测性极限。根据近7400个无线网络用户的移动轨迹,我们估计用户的最大可预测性平均为82 \%,并且我们发现最佳的Markov预测器在67%的时间内是准确的。此外,我们表明通过利用多位置预测可以实现中等的性能提升。

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