I am trying to make a simple radial basis function network (RBFN) for regression. I have a 20 dimensional (feature) dataset with over 600 samples. I need the final network to output 1 scalar value for each 20 dimensional sample.

Note: new to machine learning...and feel like I am missing an important concept here.

With the perceptron we can, and I have, trained a linear network until the prediction error is at a minimum using a small subset of the initial samples.

Is there a similar process with the RBFN?