object |
What to compose the new Layer instance with. Typically a
Sequential model or a Tensor (e.g., as returned by layer_input() ).
The return value depends on object . If object is:
missing or NULL , the Layer instance is returned.
a Sequential model, the model with an additional layer is returned.
a Tensor, the output tensor from layer_instance(object) is returned.
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layer |
A RNN layer instance, such as layer_lstm() or
layer_gru() . It could also be a keras$layers$Layer instance that
meets the following criteria:
Be a sequence-processing layer (accepts 3D+ inputs).
Have a go_backwards , return_sequences and return_state attribute
(with the same semantics as for the RNN class).
Have an input_spec attribute.
Implement serialization via get_config() and from_config() . Note
that the recommended way to create new RNN layers is to write a custom RNN
cell and use it with layer_rnn() , instead of subclassing
keras$layers$Layer directly.
When returns_sequences = TRUE , the output of the masked timestep will
be zero regardless of the layer's original zero_output_for_mask value.
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merge_mode |
Mode by which outputs of the forward and backward RNNs will
be combined. One of 'sum' , 'mul' , 'concat' , 'ave' , NULL . If
NULL , the outputs will not be combined, they will be returned as a list.
Default value is 'concat' .
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weights |
Split and propagated to the initial_weights attribute on the
forward and backward layer.
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backward_layer |
Optional keras.layers.RNN , or keras.layers.Layer
instance to be used to handle backwards input processing. If
backward_layer is not provided, the layer instance passed as the layer
argument will be used to generate the backward layer automatically. Note
that the provided backward_layer layer should have properties matching
those of the layer argument, in particular it should have the same values
for stateful , return_states , return_sequences , etc. In addition,
backward_layer and layer should have different go_backwards argument
values. A ValueError will be raised if these requirements are not met.
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... |
standard layer arguments.
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