Numap7 7.1

Freeware for fast training, validation, and application of regression/approximation networks including the multilayer perceptron, functional link network, piecewise linear network, self organizing map and K-Means. C source for applying trained networks. Extensive help. User-supplied txt-format training data files, containing rows of numbers, can be of any size. Pruning for approximate structural risk minimization. ...

Author Neural Decision Lab LLC
License Freeware
Price FREE
Released 2007-09-25
Downloads 425
Filesize 13.73 MB
Requirements Windows 2000 or XP, 32MB RAM, 25MB hard disk space
Installation Install Only
Keywords neural network, multilayer perceptron, fast training, validation, regression, approximation
Users' rating
(2 rating)
Numap7Math & Scientific ToolsWindows 2000, Windows XP, Windows 2003
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