Visual analytical tool for higher order k-means clustering for trajectory data mining

Conference Publication ResearchOnline@JCU
Wang, Ye;Lee, Kyungmi;Lee, Ickjai
Abstract

Trajectories are useful sources to understand moving objects and locations. Many trajectory data mining techniques have been researched in the past decade. Higher order information providing suggestions to what-if analysis when the best possible option is not feasible is of importance in dynamic and complex spatial environments. Despite of the importance of higher order information in trajectory data mining, it has received little attention in literature. This paper introduces new visualisation methods for determination of higher order k-means clustering for trajectory data mining. This paper proposes a radar chart-like visualisation for geometrical and directional higher order information and a k-means clustering technique for trajectory higher order information. This paper also demonstrates the usefulness of proposed visualisation methods and clustering technique with a case study using real world datasets.

Journal

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Publication Name

AI 2016: 29th Australasian Joint Conference on Artificial Intelligence

Volume

9992

ISBN/ISSN

978-3-319-50127-7

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Pages Count

12

Location

Hobart, TAS, Australia

Publisher

Springer

Publisher Url

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Publisher Location

Berlin, Germany

Publish Date

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Url

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Date

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EISSN

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DOI

10.1007/978-3-319-50127-7_43