Spatiotemporal data analysis with chronological networks

Loading...
Thumbnail Image
Date
2020
Volume
11
Issue
Journal
Nature Communications
Series Titel
Book Title
Publisher
[London] : Nature Publishing Group UK
Abstract

The number of spatiotemporal data sets has increased rapidly in the last years, which demands robust and fast methods to extract information from this kind of data. Here, we propose a network-based model, called Chronnet, for spatiotemporal data analysis. The network construction process consists of dividing a geometric space into grid cells represented by nodes connected chronologically. Strong links in the network represent consecutive recurrent events between cells. The chronnet construction process is fast, making the model suitable to process large data sets. Using artificial and real data sets, we show how chronnets can capture data properties beyond simple statistics, like frequent patterns, spatial changes, outliers, and spatiotemporal clusters. Therefore, we conclude that chronnets represent a robust tool for the analysis of spatiotemporal data sets.

Description
Keywords
Citation
Ferreira, L. N., Vega-Oliveros, D. A., Cotacallapa, M., Cardoso, M. F., Quiles, M. G., Zhao, L., & Macau, E. E. N. (2020). Spatiotemporal data analysis with chronological networks ([London] : Nature Publishing Group UK). [London] : Nature Publishing Group UK. https://doi.org//10.1038/s41467-020-17634-2
Collections
License
CC BY 4.0 Unported