Presenter: Wesley Brooks
Date: 4 May 2021
We often see that values observed in closer spatial proximity are more alike than those from distant locations, and thus the data may not be independent. This can cause problems, and opportunities, for our analyses. In this workshop, we will discuss how spatial data can break the assumptions of common statistical methods, and work towards identifying and implementing appropriate methods in R. Specifically, this workshop will focus on the uncertainty of spatial interpolation and regression.
By the end of this workshop, participants will be able to:
– Identify primary spatial data types (lattice, geostatistical, and point data)
– Describe some popular R packages for spatial data analysis
– Run code to execute common tasks in interpolation and regression.
Workshop Materials: https://github.com/ucdavisdatalab/workshop-spatial-stats