Data Training and Analysis with the New Neural Networks from
Wolfram Research
December 9, 2002--The new Neural Networks application
package from Wolfram Research provides a robust environment for modeling
and predicting
data. Artificial neural networks have revolutionized the way
researchers solve complex, real-world problems in engineering, science,
economics, and finance. Now users can test and explore neural network
models faster and easier than ever before, using the computational power
and flexibility of Mathematica.
Neural Networks is designed to give professionals and students the
tools
to train, visualize, and validate neural network models. It supports a
comprehensive set of neural network structures and implements
state-of-the-art training algorithms while taking full advantage of
Mathematica's number-crunching and visualization capabilities. It
also
includes special functions to address typical problems in data analysis,
such as function approximation, classification and detection, clustering,
nonlinear time series, and nonlinear system identification problems.
Building on a user-friendly command structure, Neural Networks offers:
- Support for proven neural network paradigms, structures, and
applications
- Support for traditional and advanced training algorithms
- Intelligent initialization algorithms to begin training with superior
performance and speed
- Fast, reliable optimization of expressions and compiling of code with
a single command
- A powerful modeling environment with support for hidden layers and
neurons
Built-in palettes facilitate the input of any parameter for the analysis,
evaluation, and training of your data, making the product easy to learn
and use. This was a high priority during the development cycle, as was
using Mathematica's rich computation and programming environment to
incorporate additional functionality. "Unlike other solutions that consist
of restrictive black box implementations, Neural Networks allows
you to see and evaluate how your data is being trained from start to finish, at
every step along the way," says Yezabel Dooley, Applications Product
Manager at Wolfram Research.
With Neural Networks you can fit the network to your data,
visualize the
fitted network, and view the distribution of errors with only a few
commands. Professionals and students with little or no background in
neural networks will benefit from the comprehensive online documentation,
the large number of examples, and the interactive online tutorial. At the
same time, advanced users will appreciate the flexible options for each
function and numerous possibilities for modifying the included algorithms,
as well as the ability to develop new training algorithms of their own to
further extend the capabilities of the package.
Neural Networks is designed for use with Mathematica 4 or
later and is
available for Windows, Mac OS, Mac OS X, Linux (PC, Alpha, PowerPC),
Solaris, HP-UX, IRIX, AIX, Compaq Tru64 Unix, and compatible systems. Further information about
Neural Networks is available.
| |