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Spatiotemporal Frequent Pattern Mining From Evolving Region Trajectories 1st Ed Berkay Aydin

  • SKU: BELL-10801964
Spatiotemporal Frequent Pattern Mining From Evolving Region Trajectories 1st Ed Berkay Aydin
$ 31.00 $ 45.00 (-31%)

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Spatiotemporal Frequent Pattern Mining From Evolving Region Trajectories 1st Ed Berkay Aydin instant download after payment.

Publisher: Springer International Publishing
File Extension: PDF
File size: 5.11 MB
Author: Berkay Aydin, Rafal. A Angryk
ISBN: 9783319998725, 9783319998732, 3319998722, 3319998730
Language: English
Year: 2018
Edition: 1st ed.

Product desciption

Spatiotemporal Frequent Pattern Mining From Evolving Region Trajectories 1st Ed Berkay Aydin by Berkay Aydin, Rafal. A Angryk 9783319998725, 9783319998732, 3319998722, 3319998730 instant download after payment.

This SpringerBrief provides an overview within data mining of spatiotemporal frequent pattern mining from evolving regions to the perspective of relationship modeling among the spatiotemporal objects, frequent pattern mining algorithms, and data access methodologies for mining algorithms. While the focus of this book is to provide readers insight into the mining algorithms from evolving regions, the authors also discuss data management for spatiotemporal trajectories, which has become increasingly important with the increasing volume of trajectories.

This brief describes state-of-the-art knowledge discovery techniques to computer science graduate students who are interested in spatiotemporal data mining, as well as researchers/professionals, who deal with advanced spatiotemporal data analysis in their fields. These fields include GIS-experts, meteorologists, epidemiologists, neurologists, and solar physicists.

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