Activation Functions

Sigmoid Activation

Sigmoid Activations are a type of activation function for neural networks:

$$f\left(x\right) = \frac{1}{\left(1+\exp\left(-x\right)\right)}$$

Some drawbacks of this activation that have been noted in the literature are: sharp damp gradients during backpropagation from deeper hidden layers to inputs, gradient saturation, and slow convergence.

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Task Papers Share
Language Modelling 21 2.85%
Classification 19 2.58%
Decoder 19 2.58%
Time Series Forecasting 17 2.31%
Decision Making 17 2.31%
Sentence 17 2.31%
Management 15 2.04%
Image-to-Image Translation 15 2.04%
Image Classification 14 1.90%

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