I am trying to account for spatial autocorrelation in a model in R. Each observation is a country for which I have the average latitude and longitude. Here's some sample data:
country <- c("IQ", "MX", "IN", "PY")
long <- c(43.94511, -94.87018, 78.10349, -59.15377)
lat <- c(33.9415073, 18.2283975, 23.8462264, -23.3900255)
Pathogen <- c(10.937891, 13.326284, 12.472374, 12.541716)
Answer.values <- c(0, 0, 1, 0)
data <- data.frame(country, long, lat, Pathogen, Answer.values)
I know spatial autocorrelation is an issue (Moran's i is significant in the whole dataset). This is the model I am testing (Answer Values (a 0/1 variable) ~ Pathogen Prevalence (a continuous variable)).
model <- glm(Answer.values ~ Pathogen,
na.action = na.omit,
data = data,
family = "binomial")
How would I account for spatial autocorrelation with a data structure like that?