Spatial Association of Different Types of Polygon
from polygons
ID aware distance matrix
Integram Measure with Assimetry Correction
Integram Measure
Maximum Absolute Deviation with Assimetry Correction
Maximum Absolute Deviation
auxiliary mean
Pre-TS
Studentized Integram Measure
Studentized Maximum Absolute Deviation
sapo: Spatial Association of Polygon Types
Toroidal Shift
Translate an sf object by a "point"
Fix distance matrix containing broken polygons
Create jumps for random movements
from matrix
Polygons Spatial Association Test - Global Envelope
In ecology, spatial data is often represented using polygons. These polygons can represent a variety of spatial entities, such as ecological patches, animal home ranges, or gaps in the forest canopy. Researchers often need to determine if two spatial processes, represented by these polygons, are independent of each other. For instance, they might want to test if the home range of a particular animal species is influenced by the presence of a certain type of vegetation. To address this, Godoy et al. (2022) (<doi:10.1016/j.spasta.2022.100695>) developed conditional Monte Carlo tests. These tests are designed to assess spatial independence while taking into account the shape and size of the polygons.