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Mining periodic movement patterns of mobile phone users based on an efficient sampling approach

机译:基于有效采样方法的手机用户周期性运动模式挖掘

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In m-commerce services, the periodic movement trends of customers at specific periods can be adopted to allocate the resources of telecommunications systems effectively and offer personalized location-based services. This study explores the mining of periodic maximal promising movement patterns. A detailed process for mining periodic maximal promising movement patterns based on graph mapping and sampling techniques is devised to enhance mining efficiency. First, a random sample of movement paths from time intervals is taken. Second, a unique path graph structure is built to store the movement paths obtained from the sample. Third, a graph traversal algorithm is developed to identify the maximal promising movement patterns. Finally, vector operations are undertaken to examine the maximal promising movement patterns in order to derive the periodic maximal promising movement patterns. Experimental results reveal that the sampling approach with mining has excellent execution efficiency and scalability in the investigation of periodic maximal promising movement patterns.
机译:在移动商务服务中,可以采用特定时期客户的周期性移动趋势来有效地分配电信系统资源,并提供个性化的基于位置的服务。这项研究探索了周期性最大有希望运动模式的挖掘。设计了一种基于图形映射和采样技术的挖掘周期性最大有前途运动模式的详细过程,以提高挖掘效率。首先,从时间间隔中随机抽取运动路径。其次,建立一个独特的路径图结构来存储从样本获得的移动路径。第三,开发了一种图形遍历算法来识别最大有希望的运动模式。最后,进行矢量运算以检查最大有希望的运动模式,以便得出周期性的最大有希望的运动模式。实验结果表明,在周期性最大有前途运动模式的研究中,采用挖掘的采样方法具有出色的执行效率和可伸缩性。

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