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comp.ai.neural-nets FAQ, Part 1 of 7: Introduction
Section - Where is comp.ai.neural-nets archived?

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The following archives are available for comp.ai.neural-nets: 

 o http://groups.google.com, formerly Deja News. Does not work very well
   yet. 
 o 94-09-14 through 97-08-16 
   ftp://ftp.cs.cmu.edu/user/ai/pubs/news/ 

For more information on newsgroup archives, see 
http://starbase.neosoft.com/~claird/news.lists/newsgroup_archives.html 
or http://www.pitt.edu/~grouprev/Usenet/Archive-List/newsgroup_archives.html

User Contributions:

1
Majid Maqbool
Sep 27, 2024 @ 5:05 am
https://techpassion.co.uk/how-does-a-smart-tv-work-read-complete-details/
PDP++ is a neural-network simulation system written in C++, developed as an advanced version of the original PDP software from McClelland and Rumelhart's "Explorations in Parallel Distributed Processing Handbook" (1987). The software is designed for both novice users and researchers, providing flexibility and power in cognitive neuroscience studies. Featured in Randall C. O'Reilly and Yuko Munakata's "Computational Explorations in Cognitive Neuroscience" (2000), PDP++ supports a wide range of algorithms. These include feedforward and recurrent error backpropagation, with continuous and real-time models such as Almeida-Pineda. It also incorporates constraint satisfaction algorithms like Boltzmann Machines, Hopfield networks, and mean-field networks, as well as self-organizing learning algorithms, including Self-organizing Maps (SOM) and Hebbian learning. Additionally, it supports mixtures-of-experts models and the Leabra algorithm, which combines error-driven and Hebbian learning with k-Winners-Take-All inhibitory competition. PDP++ is a comprehensive tool for exploring neural network models in cognitive neuroscience.

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Top Document: comp.ai.neural-nets FAQ, Part 1 of 7: Introduction
Previous Document: What is this newsgroup for? How shall it be
Next Document: What if my question is not answered in the FAQ?

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Last Update March 27 2014 @ 02:11 PM