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Spatio-temporal human mobility prediction based on trajectory data mining for resource management in mobile communication networks

机译:基于轨迹数据挖掘的时空人类移动性预测在移动通信网络中的资源管理

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In the future mobile communication, communication based on various mobility models is expected. In 5G mobile communication network that can flexibly allocate network resources, it is necessary to predict traffic demands in order to appropriately allocate network resources. Therefore, it is important to predict the behavior of spatio-temporal mobility in order to appropriately allocate network resources. The pervasiveness of mobile devices based services leading to an increasing volume of spatiotemporal datasets and to the opportunity of discovering usable knowledge about mobility behavior. This knowledge is useful to provide stable communication to mobile networks expected to increase traffic flow. In this paper, we propose a method to grasp the behavior of the mobility in spatio-temporal by mining the trajectory data of the mobility obtained from the GPS data to predict the future mobility of the user from frequent patterns. We propose a mining and prediction algorithm that employs the huge amount of trajectory data. We apply sequential pattern mining algorithms including PrefixSpan and BIDE to obtain frequent trajectory patterns from trajectory database. We evaluate the proposed method using actual trajectory dataset, Geolife project, and demonstrate that the proposed method successfully extracts sufficient number of frequent trajectory patterns to predict the future trajectory of mobility.
机译:在未来的移动通信中,期望基于各种移动性模型的通信。在可以灵活分配网络资源的5G移动通信网络中,有必要预测流量需求以适当分配网络资源。因此,重要的是预测时空移动性的行为,以便适当地分配网络资源。基于移动设备的服务的普遍性导致时空数据集数量的增加,并带来了发现有关移动性行为的可用知识的机会。该知识有助于为预期会增加流量的移动网络提供稳定的通信。在本文中,我们提出了一种方法,该方法通过挖掘从GPS数据获得的移动性的轨迹数据来从时空模式中预测用户的未来移动性,从而掌握时空移动性的行为。我们提出一种采用大量轨迹数据的挖掘和预测算法。我们应用了包括PrefixSpan和BIDE在内的顺序模式挖掘算法,以从轨迹数据库中获取频繁的轨迹模式。我们使用实际的轨迹数据集Geolife项目评估了该方法,并证明了该方法成功地提取了足够数量的频繁轨迹模式以预测未来的机动性轨迹。

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