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This is simple Back-Propagation Neural Network simulation using C#. This code is a part of my "Supervised Neural Network" book written in 2006.

http://backpronn.codeplex.com/Tags | neural-network |

Implementation | CSharp |

License | Ms-RL |

Platform | Windows |

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