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Semantic-aware Query Processing for Activity Trajectories

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conference contribution
posted on 2024-07-26, 14:52 authored by Helena Liu, Jiajie Xu, Kai Zheng, Chengfei LiuChengfei Liu, Lan Du, Xian Wu
Nowadays, users of social networks like tweets and weibo have generated massive geo-tagged records, and these records reveal their activities in the physical world together with spatio-temporal dynamics. Existing trajectory data management studies mainly focus on analyzing the spatio-temporal properties of trajectories, while leaving the understanding of their activities largely untouched. In this paper, we incorporate the semantic analysis of the activity information embedded in trajectories into query modelling and processing, with the aim of providing end users more accurate and meaningful trip recommendations. To this end, we propose a novel trajectory query that not only considers the spatio-temporal closeness but also, more importantly, leverages probabilistic topic modelling to capture the semantic relevance of the activities between data and query. To support efficient query processing, we design a novel hybrid index structure, namely ST-tree, to organize the trajectory points hierarchically, which enables us to prune the search space in spatial and topic dimensions simultaneously. The experimental results on real datasets demonstrate the efficiency and scalability of the proposed index structure and search algorithms.

Funding

Identifying and Tracking Influential Events in Large Social Networks

Australian Research Council

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Biclique discovery in Big Data

Australian Research Council

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History

Available versions

PDF (Accepted manuscript)

ISBN

9781450346757

Journal title

Tenth ACM International Conference on Web Search and Data Mining (WSDM 2017)

Conference name

10th ACM International Conference on Web Search and Data Mining, WSDM 2017

Location

Cambridge

Start date

2017-02-06

End date

2017-02-10

Pagination

9 pp

Publisher

ACM Press

Copyright statement

Copyright © 2017 ACM. The accepted manuscript is reproduced in accordance with the copyright policy of the publisher.

Language

eng

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