nnet

5.0
(1)

nnet is a software for feed-forward neural networks with a single hidden layer, and for multinomial log-linear models.

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nnet review by G2 Crowd User in Hospital & Health Care
G2 Crowd User in Hospital & Health Care
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"Nnet is a great place to start"

What do you like best?

If one was looking for a great neural network package in R, this would be the first place to start.

What do you dislike?

Unlike some of the packages ported to R from tensorflow or keras, nnet needs another package to make sure operations are done in parallel.

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

Any specific data neural network problems can be solved with this package, benefits are very fast deployment of solutions.

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