LayerNormalization layer
- Original Link : https://keras.io/api/layers/normalization_layers/layer_normalization/
- Last Checked at : 2024-11-25
LayerNormalization
class
keras.layers.LayerNormalization(
axis=-1,
epsilon=0.001,
center=True,
scale=True,
rms_scaling=False,
beta_initializer="zeros",
gamma_initializer="ones",
beta_regularizer=None,
gamma_regularizer=None,
beta_constraint=None,
gamma_constraint=None,
**kwargs
)
Layer normalization layer (Ba et al., 2016).
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_i
in inputs
with k
features, we compute the mean and variance of the sample:
mean_i = sum(x_i[j] for j in range(k)) / k
var_i = sum((x_i[j] - mean_i) ** 2 for j in range(k)) / k
and then compute a normalized x_i_normalized
, including a small factor epsilon
for numerical stability.
x_i_normalized = (x_i - mean_i) / sqrt(var_i + epsilon)
And finally x_i_normalized
is linearly transformed by gamma
and beta
, which are learned parameters:
output_i = x_i_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 = keras.layers.LayerNormalization(axis=[1, 2, 3])
>>> layer.build([5, 20, 30, 40])
>>> print(layer.beta.shape)
(20, 30, 40)
>>> print(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 Normalization that normalizes across height, width, and channel and has gamma
and beta
span only the channel dimension. So, this Layer Normalization implementation will not match a Group Normalization layer with group size set to 1.
Arguments
- axis: Integer or List/Tuple. The axis or axes to normalize across. Typically, this is the features axis/axes. The left-out axes are typically the batch axis/axes.
-1
is the last dimension in the input. Defaults to-1
. - epsilon: Small float added to variance to avoid dividing by zero. Defaults to 1e-3.
- center: If True, add offset of
beta
to normalized tensor. If False,beta
is ignored. Defaults toTrue
. - scale: If True, multiply by
gamma
. If False,gamma
is not used. When the next layer is linear (also e.g.nn.relu
), this can be disabled since the scaling will be done by the next layer. Defaults toTrue
. - rms_scaling: If True,
center
andscale
are ignored, and the inputs are scaled bygamma
and the inverse square root of the square of all inputs. This is an approximate and faster approach that avoids ever computing the mean of the input. - 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. None by default.
- gamma_regularizer: Optional regularizer for the gamma weight. None by default.
- beta_constraint: Optional constraint for the beta weight. None by default.
- gamma_constraint: Optional constraint for the gamma weight. None by default.
- **kwargs: Base layer keyword arguments (e.g.
name
anddtype
).
Reference