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Applies the rectified linear unit activation function.
tf.keras.activations.relu(
x, alpha=0.0, max_value=None, threshold=0.0
)
With default values, this returns the standard ReLU activation:
max(x, 0), the element-wise maximum of 0 and the input tensor.
Modifying default parameters allows you to use non-zero thresholds, change the max value of the activation, and to use a non-zero multiple of the input for values below the threshold.
Example:
foo = tf.constant([-10, -5, 0.0, 5, 10], dtype = tf.float32)tf.keras.activations.relu(foo).numpy()array([ 0., 0., 0., 5., 10.], dtype=float32)tf.keras.activations.relu(foo, alpha=0.5).numpy()array([-5. , -2.5, 0. , 5. , 10. ], dtype=float32)tf.keras.activations.relu(foo, max_value=5.).numpy()array([0., 0., 0., 5., 5.], dtype=float32)tf.keras.activations.relu(foo, threshold=5.).numpy()array([-0., -0., 0., 0., 10.], dtype=float32)
Args |
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x
tensor or variable.
alpha
float that governs the slope for values lower than the
threshold.
max_value
float that sets the saturation threshold (the largest
value the function will return).
threshold
float giving the threshold value of the activation
function below which values will be damped or set to zero.
Returns | |
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A Tensor representing the input tensor,
transformed by the relu activation function.
Tensor will be of the same shape and dtype of input x.
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