What is it about?

In this research, we present a spatio-temporal analytical framework including spatio-temporal visualization (STV), space-time kernel density estimation (STKDE), and spatio-temporal-autocorrelation-analysis (STAA), to explore human mobility patterns and intra-urban communication dynamics. Experiments were conducted using large-scale detailed records of mobile phone calls in a city. The space-time path, time series graphs, vertical Bézier curves, STKDE, STAA, and related techniques in 3D GIS as well as statistical tests have been suggested for different spatio-temporal analysis tasks. We also investigated several statistical measures that extend the classic spatial association indices for spatio-temporal autocorrelation analysis. The spatial order of weighted matrix was found to have more significant effects than the temporal neighbors on influencing the autocorrelation strength of hourly phone calls.

Featured Image

Why is it important?

The spaiotemporal autocorrelation and the spatial dependency are examined using the large-scale mobile phone data.

Read the Original

This page is a summary of: Spatio-Temporal Analytics for Exploring Human Mobility Patterns and Urban Dynamics in the Mobile Age, Spatial Cognition and Computation, November 2014, Taylor & Francis,
DOI: 10.1080/13875868.2014.984300.
You can read the full text:

Read

Contributors

The following have contributed to this page