Neural networks in R
We will build several neural networks in this section. First, we will use the neuralnet package to create a neural network model that we can visualize. We will also use the nnet
and RSNNS
(Bergmeir, C., and BenÃtez, J. M. (2012)) packages. These are standard R packages and can be installed by the install.packages
command or from the packages pane in RStudio. Although it is possible to use the nnet
package directly, we are going to use it through the caret
package, which is short for Classification and Regression Training. The caret
package provides a standardized interface to work with many machine learning (ML) models in R, and also has some useful features for validation and performance assessment that we will use in this chapter and the next.
For our first examples of building neural networks, we will use the MNIST
dataset, which is a classic classification problem: recognizing handwritten digits based on pictures. The data can be downloaded from the Apache MXNet site...