Clustering and aggregating clues of trajectories for mining trajectory patterns and routes
In this paper, we propose a new trajectory pattern mining framework, namely Clustering and Aggregating Clues of Trajectories (CACT) , for discovering trajectory routes that represent the frequent movement behaviors of a user. In addition to spatial and temporal biases, we observe that trajectories c...
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Veröffentlicht in: | The VLDB journal 2015-04, Vol.24 (2), p.169-192 |
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Sprache: | eng |
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Zusammenfassung: | In this paper, we propose a new trajectory pattern mining framework, namely
Clustering and Aggregating Clues of Trajectories (CACT)
, for discovering
trajectory routes
that represent the frequent movement behaviors of a user. In addition to spatial and temporal biases, we observe that trajectories contain
silent durations
, i.e., the time durations when no data points are available to describe the movements of users, which bring many challenging issues to trajectory pattern mining. We claim that a movement behavior would leave some
clues
in its various sampled/observed trajectories. These clues may be extracted from spatially and temporally co-located data points from the observed trajectories. Based on this observation, we propose
clue-aware trajectory similarity
to measure the clues between two trajectories. Accordingly, we further propose the
clue-aware trajectory clustering
algorithm to cluster similar trajectories into groups to capture the movement behaviors of the user. Finally, we devise the
clue-aware trajectory aggregation
algorithm to aggregate trajectories in the same group to derive the corresponding trajectory pattern and route. We validate our ideas and evaluate the proposed CACT framework by experiments using both synthetic and real datasets. The experimental results show that CACT is more effective in discovering trajectory patterns than the state-of-the-art techniques for mining trajectory patterns. |
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ISSN: | 1066-8888 0949-877X |
DOI: | 10.1007/s00778-011-0262-6 |