Search results for "module:AI::NeuralNet::BackProp"
AI::NeuralNet::BackProp - A simple back-prop neural net that uses Delta's and Hebbs' rule.
AI::NeuralNet::BackProp implements a nerual network similar to a feed-foward, back-propagtion network; learning via a mix of a generalization of the Delta rule and a disection of Hebbs rule. The actual neruons of the network are implemented via the A...
JBRYAN/AI-NeuralNet-BackProp-0.89 - 17 Aug 2000 07:21:47 UTC
AI::NeuralNet::Simple - An easy to use backprop neural net.
The Disclaimer Please note that the following information is terribly incomplete. That's deliberate. Anyone familiar with neural networks is going to laugh themselves silly at how simplistic the following information is and the astute reader will not...
OVID/AI-NeuralNet-Simple-0.11 - 18 Nov 2006 15:53:01 UTC
AI::NNEasy - Define, learn and use easy Neural Networks of different types using a portable code in Perl and XS.
The main purpose of this module is to create easy Neural Networks with Perl. The module was designed to can be extended to multiple network types, learning algorithms and activation functions. This architecture was 1st based in the module AI::NNFlex,...
GMPASSOS/AI-NNEasy-0.06 - 17 Jan 2005 02:25:07 UTC
AI::Perceptron - example of a node in a neural network.
This module is meant to show how a single node of a neural network works. Training is done by the *Stochastic Approximation of the Gradient-Descent* model....
SPURKIS/AI-Perceptron-1.0 - 10 Oct 2003 15:48:24 UTC
AI::NeuralNet::Mesh - An optimized, accurate neural network Mesh.
AI::NeuralNet::Mesh is an optimized, accurate neural network Mesh. It was designed with accruacy and speed in mind. This network model is very flexable. It will allow for clasic binary operation or any range of integer or floating-point inputs you ca...
JBRYAN/AI-NeuralNet-Mesh-0.44 - 14 Sep 2000 20:56:21 UTC