| nn | R Documentation | 
Neural Networks using nnet
nn(
  dataset,
  rvar,
  evar,
  type = "classification",
  lev = "",
  size = 1,
  decay = 0.5,
  wts = "None",
  seed = NA,
  check = "standardize",
  form,
  data_filter = "",
  arr = "",
  rows = NULL,
  envir = parent.frame()
)
| dataset | Dataset | 
| rvar | The response variable in the model | 
| evar | Explanatory variables in the model | 
| type | Model type (i.e., "classification" or "regression") | 
| lev | The level in the response variable defined as _success_ | 
| size | Number of units (nodes) in the hidden layer | 
| decay | Parameter decay | 
| wts | Weights to use in estimation | 
| seed | Random seed to use as the starting point | 
| check | Optional estimation parameters ("standardize" is the default) | 
| form | Optional formula to use instead of rvar and evar | 
| data_filter | Expression entered in, e.g., Data > View to filter the dataset in Radiant. The expression should be a string (e.g., "price > 10000") | 
| arr | Expression to arrange (sort) the data on (e.g., "color, desc(price)") | 
| rows | Rows to select from the specified dataset | 
| envir | Environment to extract data from | 
See https://radiant-rstats.github.io/docs/model/nn.html for an example in Radiant
A list with all variables defined in nn as an object of class nn
summary.nn to summarize results
plot.nn to plot results
predict.nn for prediction
nn(titanic, "survived", c("pclass", "sex"), lev = "Yes") %>% summary()
nn(titanic, "survived", c("pclass", "sex")) %>% str()
nn(diamonds, "price", c("carat", "clarity"), type = "regression") %>% summary()
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.