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The field of study concerning statistical methods that use space and spatial relationships (such as distance, area, volume, length, height, orientation, centrality and/or other spatial characteristics of data) directly in their mathematical computations.
2
votes
Accepted
Estimating population concentrations in spatially autocorrelated data
Per @ASeaton's answer, I tried using a GAM for this and I got a pretty satisfactory answer.
library(mgcv)
gmod <- gam(meas ~ s(Xpos, Ypos), data = v4, family = "poisson")
gpred <- predict(gmod, type …
1
vote
1
answer
56
views
Estimating population concentrations in spatially autocorrelated data
I'm stuck on which statistic to use with a spatial data set to resolve population concentrations in a large area, when I have only sampled a small area relative to that large area. …