These functions generate parameters that are useful for neural network models.
dropout(range = c(0, 1), trans = NULL)epochs(range = c(10L, 1000L), trans = NULL)
hidden_units(range = c(1L, 10L), trans = NULL)
hidden_units_2(range = c(1L, 10L), trans = NULL)
batch_size(range = c(unknown(), unknown()), trans = transform_log2())
A two-element vector holding the defaults for the smallest and largest possible values, respectively. If a transformation is specified, these values should be in the transformed units.
A trans object from the scales package, such as
scales::transform_log10() or scales::transform_reciprocal(). If not provided,
the default is used which matches the units used in range. If no
transformation, NULL.
dropout(): The parameter dropout rate. (See parsnip:::mlp()).
epochs(): The number of iterations of training. (See parsnip:::mlp()).
hidden_units(): The number of hidden units in a network layer.
(See parsnip:::mlp()).
batch_size(): The mini-batch size for neural networks.