Graph mining indoor tracking data for social interaction analysis

Mani Williams, J. Burry, Asha Rao
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引用次数: 4

Abstract

With the advancement in wireless sensor networks (WSN) researchers in social network analysis (SNA) now have access to larger and more complex datasets that describe human interactions in the physical space. Studies in WSN thrive on accuracy and robustness whereas SNA operates on a higher level of data abstraction. Graph mining is a bridge between these two fields. This paper investigates two approaches to graph mining and compares their efficiency and appropriateness as the input systems for a social interaction analysis process.
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图挖掘室内跟踪数据的社会互动分析
随着无线传感器网络(WSN)的发展,社会网络分析(SNA)的研究人员现在可以使用更大和更复杂的数据集来描述物理空间中的人类互动。WSN的研究主要集中在准确性和鲁棒性上,而SNA的研究主要集中在更高层次的数据抽象上。图挖掘是这两个领域之间的桥梁。本文研究了图挖掘的两种方法,并比较了它们作为社会互动分析过程输入系统的效率和适用性。
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