layer_layer_normalization {keras3} | R Documentation |
Layer normalization layer (Ba et al., 2016).
Description
Normalize the activations of the previous layer for each given example in a batch independently, rather than across a batch like Batch Normalization. i.e. applies a transformation that maintains the mean activation within each example close to 0 and the activation standard deviation close to 1.
If scale
or center
are enabled, the layer will scale the normalized
outputs by broadcasting them with a trainable variable gamma
, and center
the outputs by broadcasting with a trainable variable beta
. gamma
will
default to a ones tensor and beta
will default to a zeros tensor, so that
centering and scaling are no-ops before training has begun.
So, with scaling and centering enabled the normalization equations are as follows:
Let the intermediate activations for a mini-batch to be the inputs
.
For each sample x
in a batch of inputs
, we compute the mean and
variance of the sample, normalize each value in the sample
(including a small factor epsilon
for numerical stability),
and finally,
transform the normalized output by gamma
and beta
,
which are learned parameters:
outputs <- inputs |> apply(1, function(x) { x_normalized <- (x - mean(x)) / sqrt(var(x) + epsilon) x_normalized * gamma + beta })
gamma
and beta
will span the axes of inputs
specified in axis
, and
this part of the inputs' shape must be fully defined.
For example:
layer <- layer_layer_normalization(axis = c(2, 3, 4)) layer(op_ones(c(5, 20, 30, 40))) |> invisible() # build() shape(layer$beta)
## shape(20, 30, 40)
shape(layer$gamma)
## shape(20, 30, 40)
Note that other implementations of layer normalization may choose to define
gamma
and beta
over a separate set of axes from the axes being
normalized across. For example, Group Normalization
(Wu et al. 2018) with group size of 1
corresponds to a layer_layer_normalization()
that normalizes across height, width,
and channel and has gamma
and beta
span only the channel dimension.
So, this layer_layer_normalization()
implementation will not match a
layer_group_normalization()
layer with group size set to 1.
Usage
layer_layer_normalization(
object,
axis = -1L,
epsilon = 0.001,
center = TRUE,
scale = TRUE,
rms_scaling = FALSE,
beta_initializer = "zeros",
gamma_initializer = "ones",
beta_regularizer = NULL,
gamma_regularizer = NULL,
beta_constraint = NULL,
gamma_constraint = NULL,
...
)
Arguments
object |
Object to compose the layer with. A tensor, array, or sequential model. |
axis |
Integer or list. The axis or axes to normalize across.
Typically, this is the features axis/axes. The left-out axes are
typically the batch axis/axes. |
epsilon |
Small float added to variance to avoid dividing by zero. Defaults to 1e-3. |
center |
If |
scale |
If |
rms_scaling |
If |
beta_initializer |
Initializer for the beta weight. Defaults to zeros. |
gamma_initializer |
Initializer for the gamma weight. Defaults to ones. |
beta_regularizer |
Optional regularizer for the beta weight.
|
gamma_regularizer |
Optional regularizer for the gamma weight.
|
beta_constraint |
Optional constraint for the beta weight.
|
gamma_constraint |
Optional constraint for the gamma weight.
|
... |
Base layer keyword arguments (e.g. |
Value
The return value depends on the value provided for the first argument.
If object
is:
a
keras_model_sequential()
, then the layer is added to the sequential model (which is modified in place). To enable piping, the sequential model is also returned, invisibly.a
keras_input()
, then the output tensor from callinglayer(input)
is returned.-
NULL
or missing, then aLayer
instance is returned.
Reference
See Also
Other normalization layers:
layer_batch_normalization()
layer_group_normalization()
layer_spectral_normalization()
layer_unit_normalization()
Other layers:
Layer()
layer_activation()
layer_activation_elu()
layer_activation_leaky_relu()
layer_activation_parametric_relu()
layer_activation_relu()
layer_activation_softmax()
layer_activity_regularization()
layer_add()
layer_additive_attention()
layer_alpha_dropout()
layer_attention()
layer_average()
layer_average_pooling_1d()
layer_average_pooling_2d()
layer_average_pooling_3d()
layer_batch_normalization()
layer_bidirectional()
layer_category_encoding()
layer_center_crop()
layer_concatenate()
layer_conv_1d()
layer_conv_1d_transpose()
layer_conv_2d()
layer_conv_2d_transpose()
layer_conv_3d()
layer_conv_3d_transpose()
layer_conv_lstm_1d()
layer_conv_lstm_2d()
layer_conv_lstm_3d()
layer_cropping_1d()
layer_cropping_2d()
layer_cropping_3d()
layer_dense()
layer_depthwise_conv_1d()
layer_depthwise_conv_2d()
layer_discretization()
layer_dot()
layer_dropout()
layer_einsum_dense()
layer_embedding()
layer_feature_space()
layer_flatten()
layer_flax_module_wrapper()
layer_gaussian_dropout()
layer_gaussian_noise()
layer_global_average_pooling_1d()
layer_global_average_pooling_2d()
layer_global_average_pooling_3d()
layer_global_max_pooling_1d()
layer_global_max_pooling_2d()
layer_global_max_pooling_3d()
layer_group_normalization()
layer_group_query_attention()
layer_gru()
layer_hashed_crossing()
layer_hashing()
layer_identity()
layer_integer_lookup()
layer_jax_model_wrapper()
layer_lambda()
layer_lstm()
layer_masking()
layer_max_pooling_1d()
layer_max_pooling_2d()
layer_max_pooling_3d()
layer_maximum()
layer_mel_spectrogram()
layer_minimum()
layer_multi_head_attention()
layer_multiply()
layer_normalization()
layer_permute()
layer_random_brightness()
layer_random_contrast()
layer_random_crop()
layer_random_flip()
layer_random_rotation()
layer_random_translation()
layer_random_zoom()
layer_repeat_vector()
layer_rescaling()
layer_reshape()
layer_resizing()
layer_rnn()
layer_separable_conv_1d()
layer_separable_conv_2d()
layer_simple_rnn()
layer_spatial_dropout_1d()
layer_spatial_dropout_2d()
layer_spatial_dropout_3d()
layer_spectral_normalization()
layer_string_lookup()
layer_subtract()
layer_text_vectorization()
layer_tfsm()
layer_time_distributed()
layer_torch_module_wrapper()
layer_unit_normalization()
layer_upsampling_1d()
layer_upsampling_2d()
layer_upsampling_3d()
layer_zero_padding_1d()
layer_zero_padding_2d()
layer_zero_padding_3d()
rnn_cell_gru()
rnn_cell_lstm()
rnn_cell_simple()
rnn_cells_stack()