The purpose of motion: Learning activities from Individual Mobility Networks

Data Science and Advanced Analytics(2014)

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摘要
The large availability of mobility data allows us to investigate complex phenomena about human movement. However this adundance of data comes with few information about the purpose of movement. In this work we address the issue of activity recognition by introducing Activity-Based Cascading (ABC) classification. Such approach departs completely from probabilistic approaches for two main reasons. First, it exploits a set of structural features extracted from the Individual Mobility Network (IMN), a model able to capture the salient aspects of individual mobility. Second, it uses a cascading classification as a way to tackle the highly skewed frequency of activity classes. We show that our approach outperforms existing state-of-the-art probabilistic methods. Since it reaches high precision, ABC classification represents a very reliable semantic amplifier for Big Data.
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关键词
Big Data,directed graphs,feature extraction,pattern classification,ABC classification,Big Data,IMN,activity classes skewed frequency,activity learning,activity recognition,activity-based cascading classification,directed graph,individual mobility network,semantic amplifier,structural feature extraction
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