RSNNS

3.5
(1)

RSNNS is a Neural Networks in R using the Stuttgart Neural Network Simulator (SNNS) a library containing many standard implementations of neural networks, this package wraps the SNNS functionality to make it available from within R. Using the RSNNS low-level interface, all of the algorithmic functionality and flexibility of SNNS can be accessed and contains a convenient high-level interface, so that the most common neural network topologies and learning algorithms integrate seamlessly into R.

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"Très pratique"

What do you like best?

Ce que j'aime le mieux c'est que c'est super bien fais, sa ma fais découvrir pleins de choses sur les neurones

What do you dislike?

Ce que je n'aime pas c'est que c'est difficile a comprendre, il faut bien être attentif.

Recommendations to others considering the product:

Je recommande le logiciel est très bien, on apprend pleins de choses sur les neurones ,c'est très intéressant

What problems are you solving with the product? What benefits have you realized?

L'avantages c'est la diversité du programme sa ma fais découvrir beaucoup de choses.

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