What are activations?

At a simple level, activation functions help decide whether a neuron should be activated. This helps determine whether the information that the neuron is receiving is relevant for the input. The activation function is a non-linear transformation that happens over an input signal, and the transformed output is sent to the next neuron.

Usage

The recommended method to use activations is to add an activation layer in your neural network, and configure your desired activation:

  1. GraphBuilder graphBuilder = new NeuralNetConfiguration.Builder()
  2. // add hyperparameters and other layers
  3. .addLayer("softmax", new ActivationLayer(Activation.SOFTMAX), "previous_input")
  4. // add more layers and output
  5. .build();

Available activations


ActivationRectifiedTanh

[source]

Rectified tanh

Essentially max(0, tanh(x))

Underlying implementation is in native code


ActivationELU

[source]

f(x) = alpha (exp(x) - 1.0); x < 0= x ; x>= 0

alpha defaults to 1, if not specified


ActivationReLU

[source]

f(x) = max(0, x)


ActivationRationalTanh

[source]

Rational tanh approximationFrom https://arxiv.org/pdf/1508.01292v3

f(x) = 1.7159 tanh(2x/3)where tanh is approximated as follows,tanh(y) ~ sgn(y) { 1 - 1/(1+|y|+y^2+1.41645y^4)}

Underlying implementation is in native code


ActivationThresholdedReLU

[source]

Thresholded RELU

f(x) = x for x > theta, f(x) = 0 otherwise. theta defaults to 1.0


ActivationReLU6

[source]

f(x) = min(max(input, cutoff), 6)


ActivationHardTanH

[source]

⎧ 1, if x > 1f(x) = ⎨ -1, if x < -1⎩ x, otherwise


ActivationSigmoid

[source]

f(x) = 1 / (1 + exp(-x))


ActivationGELU

[source]

GELU activation function - Gaussian Error Linear Units


ActivationPReLU

[source]

/ Parametrized Rectified Linear Unit (PReLU)

f(x) = alpha x for x < 0, f(x) = x for x >= 0

alpha has the same shape as x and is a learned parameter.


ActivationIdentity

[source]

f(x) = x


ActivationSoftSign

[source]

f_i(x) = x_i / (1+x_i)

ActivationHardSigmoid

[source]

f(x) = min(1, max(0, 0.2x + 0.5))


ActivationSoftmax

[source]

f_i(x) = exp(x_i - shift) / sum_j exp(x_j - shift)where shift = max_i(x_i)


ActivationCube

[source]

f(x) = x^3


ActivationRReLU

[source]

f(x) = max(0,x) + alpha min(0, x)

alpha is drawn from uniform(l,u) during training and is set to l+u/2 during testl and u default to 1/8 and 1/3 respectively

Empirical Evaluation of Rectified Activations in Convolutional Network


ActivationTanH

[source]

f(x) = (exp(x) - exp(-x)) / (exp(x) + exp(-x))


ActivationSELU

[source]

https://arxiv.org/pdf/1706.02515.pdf


ActivationLReLU

[source]

Leaky RELUf(x) = max(0, x) + alpha min(0, x)alpha defaults to 0.01


ActivationSwish

[source]

f(x) = x sigmoid(x)


ActivationSoftPlus

[source]

f(x) = log(1+e^x)