What inspired this wish list request?
Data mining "bump hunting" algorithm that does not require an empirical model. Rather, it 'patiently' / incrementally searches hyper-boxes of input factors that maximize the response.
What is the improvement you would like to see?
From R:
library(prim)
library(MASS)
data(Boston)
x \<- Boston\[,5:6\]
y \<- Boston\[,1\]
boston.prim \<- prim.box(x=x, y=y, threshold.type=1)
Why is this idea important?