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Abstract:
Identifying similar users lay the foundation in many fields, such as friend recommendation, user-based collaborative filtering, and community discovery. It is useful to analyze users' similarity based on check-in data, especially the analysis of spatiotemporal and semantic information. The existing works pursue semantic similarity of user trajectories and cannot distinguish the effects of geographical factors in a fine-grained way. This paper proposes a graph embedding approach to identify similar users based on their check-in data. We firstly identify meaningful concepts of user check-in data, based on which we design a metagraph for representing features of similar user behaviors. Then we characterize each user with a sequence of nodes that are derived through a metagraph-guided random walk strategy. Finally, the sequences are embedded to generate meaningful user vectors that are used to the similarity among users and thus identify similar users. We evaluate our proposal on two datasets, the results of which show that our proposal can outperform the baselines. © 2020 Knowledge Systems Institute Graduate School. All rights reserved.
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ISSN: 2325-9000
Year: 2020
Volume: PartF162440
Page: 525-531
Language: English
Cited Count:
SCOPUS Cited Count: 2
ESI Highly Cited Papers on the List: 0 Unfold All
WanFang Cited Count:
Chinese Cited Count:
30 Days PV: 17
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