Identifying Human Mobility via Trajectory Embeddings

Qiang Gao(University of Electronic Science and Technology of China), Fan Zhou(University of Electronic Science and Technology of China), Kunpeng Zhang(University of Maryland, College Park), Goce Trajcevski(Northwestern University), Xucheng Luo(University of Electronic Science and Technology of China), Fengli Zhang(University of Electronic Science and Technology of China)
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July 28, 2017
Cited by 196Open Access
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Abstract

Understanding human trajectory patterns is an important task in many location based social networks (LBSNs) applications, such as personalized recommendation and preference-based route planning. Most of the existing methods classify a trajectory (or its segments) based on spatio-temporal values and activities, into some predefined categories, e.g., walking or jogging. We tackle a novel trajectory classification problem: we identify and link trajectories to users who generate them in the LBSNs, a problem called Trajectory-User Linking (TUL). Solving the TUL problem is not a trivial task because: (1) the number of the classes (i.e., users) is much larger than the number of motion patterns in the common trajectory classification problems; and (2) the location based trajectory data, especially the check-ins, are often extremely sparse. To address these challenges, a Recurrent Neural Networks (RNN) based semi-supervised learning model, called TULER (TUL via Embedding and RNN) is proposed, which exploits the spatio-temporal data to capture the underlying semantics of user mobility patterns. Experiments conducted on real-world datasets demonstrate that TULER achieves better accuracy than the existing methods.


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