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Where to go? Predicting next location in IoT environment

机译:去哪儿?预测IoT环境中的下一个位置

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Next location prediction has aroused great interests in the era of internet of things (IoT). With the ubiquitous deployment of sensor devices, e.g., GPS and Wi-Fi, IoT environment offers new opportunities for proactively analyzing human mobility patterns and predicting user's future visit in low cost, no matter outdoor and indoor. In this paper, we consider the problem of next location prediction in IoT environment via a session-based manner. We suggest that user's future intention in each session can be better inferred for more accurate prediction if patterns hidden inside both trajectory and signal strength sequences collected from IoT devices can be jointly modeled, which however existing state-of-the-art methods have rarely addressed. To this end, we propose a trajectory and signal sequence (TSIS) model, where the trajectory transition regularities and signal temporal dynamics are jointly embedded in a neural network based model. Specifically, we employ gated recurrent unit (GRU) for capturing the temporal dynamics in the multivariate signal strength sequence. Moreover, we adapt gated graph neural networks (gated GNNs) on location transition graphs to explicitly model the transition patterns of trajectories. Finally, both the low-dimensional representations learned from trajectory and signal sequence are jointly optimized to construct a session embedding, which is further employed to predict the next location. Extensive experiments on two real-world Wi-Fi based mobility datasets demonstrate that TSIS is effective and robust for next location prediction compared with other competitive baselines.
机译:下一个位置预测引起了物联网时代的巨大兴趣(物联网)。随着传感器设备的无处不在的部署,例如GPS和Wi-Fi,IOT环境提供了新的机会,可以积极分析人类流动模式,并以低成本预测用户未来的访问,无论户外和室内。在本文中,我们考虑通过基于会话的方式考虑IoT环境中的下一个位置预测的问题。我们建议用户在可以共同建模中隐藏的轨迹和信号强度序列内部的图案来更准确地预测,可以更好地推断每个会话中的未来意图,但是现有最先进的方法很少寻址。为此,我们提出了一种轨迹和信号序列(TSIS)模型,其中轨迹过渡规则和信号时间动态共同嵌入在基于神经网络的模型中。具体地,我们采用GET的经常性单元(GRU)来捕获多变量信号强度序列中的时间动态。此外,我们在位置转换图上调整门控图神经网络(门控GNN)以显式模拟轨迹的转换模式。最后,从轨迹和信号序列中学习的低维表示都是共同优化的,以构建嵌入的会话嵌入,这进一步用于预测下一个位置。在两个现实世界Wi-Fi的移动数据集上进行了广泛的实验表明,与其他竞争基础相比,TSIS对下一个位置预测是有效和鲁棒的。

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