Is there a way to run a model (for simplicity, a linear model) using specified columns of a data.frame?
For example, I would like to be able to do something like this:
set.seed(1) ET = runif(10, 1,20) x1 = runif(10, 1,20) x2 = runif(10, 1,30) x3 = runif(10, 1,40) Xdf = data.frame(ET = ET, X1 = x1, X2 =x2, X3 = x3) lm(ET~Xdf[,c(2,3)], data = Xdf)
Where the linear model would be equal to
lm(ET~X1 +X2, data = Xdf)
I have tried with a matrix - but it won't work in this case as I will eventually be adding spatial correlation based upon values stored in the data.frame that need to be specified by the data = data.frame call.As well as having certain names.frame. As well, I need to be able to choose certain columns in the data because this will be looping through multiple models using different predictors.
Any help would be greatly appreciated. Thanks!