Fit single-hidden-layer neural network, possibly with skip-layer connections.
NNetModel(
size = 1,
linout = NULL,
entropy = NULL,
softmax = NULL,
censored = FALSE,
skip = FALSE,
rang = 0.7,
decay = 0,
maxit = 100,
trace = FALSE,
MaxNWts = 1000,
abstol = 1e-04,
reltol = 1e-08
)number of units in the hidden layer.
switch for linear output units. Set automatically according to
the class type of the response variable [numeric: TRUE, other:
FALSE].
switch for entropy (= maximum conditional likelihood) fitting.
switch for softmax (log-linear model) and maximum conditional likelihood fitting.
a variant on softmax, in which non-zero targets mean possible classes.
switch to add skip-layer connections from input to output.
Initial random weights on [-rang, rang].
parameter for weight decay.
maximum number of iterations.
switch for tracing optimization.
maximum allowable number of weights.
stop if the fit criterion falls below abstol, indicating
an essentially perfect fit.
stop if the optimizer is unable to reduce the fit criterion by
a factor of at least 1 - reltol.
MLModel class object.
factor, numeric
size, decay
Default values for the NULL arguments and further model details can be
found in the source link below.
# NOT RUN {
fit(sale_amount ~ ., data = ICHomes, model = NNetModel)
# }
Run the code above in your browser using DataLab