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Moving object grouping rule mining based on accumulated spatio-temporal data

机译:基于累积的时空数据的移动对象分组规则挖掘

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With the advance of mobile electronic devices and the development of positioning technology, a large volume of spatio-temporal data are collected in the form of desultorily data streams, which contain a lot of potential information. In this study, we focus on discovering the composition relationships between observation moving objects in a long period. Such research can be widely used in military and civilian areas, including recommendation systems, wildlife research, military monitoring and battlefield situation awareness. The composition relationships of moving objects can be called as moving object grouping rule. In this paper, we proposed an improved traveling companion discovery method based on Nearest neighbor of time to obtained the object transactions in short time and used the incremental association rule mining (ARM) method to discovering the grouping rules of moving objects in long-term.
机译:利用移动电子设备的前进和定位技术的开发,以多层数据流的形式收集大量的时空数据,其包含大量潜在信息。在这项研究中,我们专注于在长期内发现观察移动物体之间的构成关系。这些研究可广泛用于军事和文职区域,包括推荐系统,野生动物研究,军事监测和战场状况意识。移动对象的组成关系可以称为移动对象分组规则。在本文中,我们提出了一种基于最近邻的时间的改进的旅行伴随方法,以便在短时间内获得对象事务,并使用增量关联规则挖掘(ARM)方法以长期发现移动对象的分组规则。

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