tf.layers.dropout(
inputs,
rate=0.5,
noise_shape=None,
seed=None,
training=False,
name=None
)
Defined in tensorflow/python/layers/core.py
.
Applies Dropout to the input. (deprecated)
Dropout consists in randomly setting a fraction rate
of input units to 0
at each update during training time, which helps prevent overfitting.
The units that are kept are scaled by 1 / (1 - rate)
, so that their
sum is unchanged at training time and inference time.
Arguments:
inputs
: Tensor input.rate
: The dropout rate, between 0 and 1. E.g. "rate=0.1" would drop out 10% of input units.noise_shape
: 1D tensor of typeint32
representing the shape of the binary dropout mask that will be multiplied with the input. For instance, if your inputs have shape(batch_size, timesteps, features)
, and you want the dropout mask to be the same for all timesteps, you can usenoise_shape=[batch_size, 1, features]
.seed
: A Python integer. Used to create random seeds. Seetf.set_random_seed
for behavior.training
: Either a Python boolean, or a TensorFlow boolean scalar tensor (e.g. a placeholder). Whether to return the output in training mode (apply dropout) or in inference mode (return the input untouched).name
: The name of the layer (string).
Returns:
Output tensor.
Raises:
ValueError
: if eager execution is enabled.