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Published in: Distributed and Parallel Databases 2/2015

01-06-2015

LinkNet: capturing temporal dependencies among spatial regions

Authors: Dhaval Patel, Wynne Hsu, Mong Li Lee

Published in: Distributed and Parallel Databases | Issue 2/2015

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Abstract

Many applications require understanding how event occurrences at one geographical region affect or influence event occurrences at another region, e.g. spread of disease and forest fires. Existing works typically impose a grid to partition the spatial space and utilize spatial autocorrelation property to model the spatial dependency among the grid cells. However, they are often highly sensitive to the granularity of the grid size and they do not incorporate the temporal dynamics of the event occurrences among regions. This paper utilizes the notion of a spatial network with temporal dependency to capture the dynamics of event occurrences among regions. This network is modeled as a directed graph where each node is a group of spatially nearby events and each directed edge represents the influence of events from a source node to a destination node. We design an algorithm called LinkNet to generate this network from spatio-temporal event databases. LinkNet utilizes minimum description length based information–theoretic approach to automatically adjust the number of regions and the temporal relationships among regions. Two optimizations are devised to reduce the computational complexity of LinkNet. We also demonstrate how the proposed network can be used for hotspot prediction. Experiment results on both synthetic and real world datasets demonstrate the efficiency of LinkNet and the effectiveness of the network in predicting the next hotspots.

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Appendix
Available only for authorised users
Footnotes
2
Note that, the time complexity of \(NodeCost(V,D)\) is \(O(|D|)\) instead of \(O(|V|)\) This is due to fact that region discovery algorithm has \(|D|\) regions at the start of algorithm and progressively number of regions are reduced by one in each iteration.
 
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Metadata
Title
LinkNet: capturing temporal dependencies among spatial regions
Authors
Dhaval Patel
Wynne Hsu
Mong Li Lee
Publication date
01-06-2015
Publisher
Springer US
Published in
Distributed and Parallel Databases / Issue 2/2015
Print ISSN: 0926-8782
Electronic ISSN: 1573-7578
DOI
https://doi.org/10.1007/s10619-014-7147-9

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