We present a hybrid algorithm where evolutionary computation, in the form of grammatical genetic programming, is used to generate
Radial Basis Function Networks. An introduction to the underlying algorithms of the hybrid approach is outlined, followed
by a description of a grammatical representation for Radial Basis Function networks. The hybrid algorithm is tested on five
benchmark classification problem instances, and its performance is found to be encouraging.