Fast learning with incremental RBF networks

@article{Fritzke1994FastLW,
  title={Fast learning with incremental RBF networks},
  author={Bernd Fritzke},
  journal={Neural Processing Letters},
  year={1994},
  volume={1},
  pages={2-5}
}
We present a new algorithm for the construction of radial basis function (RBF) networks. The method uses accumulated error information to determine where to insert new units. The diameter of the localized units is chosen based on the mutual distances of the units. To have the distance information always available, it is held up-to-date by a Hebbian learning rule adapted from the “Neural Gas≓ algorithm. The new method has several advantages over existing methods and is able to generate small… CONTINUE READING
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