The MATLAB(R) Neural Network Toolbox is a powerful collection of MATLAB functions for the design, training, and simulation of neural networks. It supports a wide range of network architectures with an unlimited number of processing elements and interconnections (up to operating system constraints). Supported architectures and learning rules include: supervised training of feedforward networks using the perceptron learning rule, Widrow-Hoff rule, several variations on backpropagation (including the fast Levenberg-Marquardt algorithm), and radial basis networks; supervised training of recurrent Hopfield and Elman networks; unsupervised training of associative networks inclding competitive and feature map layers; Kohonen networks, self-organizing maps, and learning vector quantization. The Neural Network Toolbox contains a textbook-quality Users' Guide, which uses tutorials, reference materials and sample applications with code examples to explain the design and use of each network architecture and paradigm.
Brian Bourgault
Development Specialist The MathWorks, Inc. 24 Prime Park Way Natick, MA 01760-1500 USA 508-653-1396 X322 fax:508-653-2997 bbourgault@mathworks.com