The activation function of a node in an artificial neural network is a function that calculates the output of the node based on its individual inputs and their weights. Nontrivial problems can be solved using only a few nodes if the activation function is nonlinear.[1] Modern activation functions include the smooth version of the ReLU, the GELU, which was used in the 2018 BERT model,[2] the logistic (sigmoid) function used in the 2012 speech recognition model developed by Hinton et al,[3] the ReLU used in the 2012 AlexNet computer vision model[4][5] and in the 2015 ResNet model.

Logistic activation function

Comparison of activation functions

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Aside from their empirical performance, activation functions also have different mathematical properties:

Nonlinear
When the activation function is non-linear, then a two-layer neural network can be proven to be a universal function approximator.[6] This is known as the Universal Approximation Theorem. The identity activation function does not satisfy this property. When multiple layers use the identity activation function, the entire network is equivalent to a single-layer model.
Range
When the range of the activation function is finite, gradient-based training methods tend to be more stable, because pattern presentations significantly affect only limited weights. When the range is infinite, training is generally more efficient because pattern presentations significantly affect most of the weights. In the latter case, smaller learning rates are typically necessary.[citation needed]
Continuously differentiable
This property is desirable (ReLU is not continuously differentiable and has some issues with gradient-based optimization, but it is still possible) for enabling gradient-based optimization methods. The binary step activation function is not differentiable at 0, and it differentiates to 0 for all other values, so gradient-based methods can make no progress with it.[7]

These properties do not decisively influence performance, nor are they the only mathematical properties that may be useful. For instance, the strictly positive range of the softplus makes it suitable for predicting variances in variational autoencoders.

Mathematical details

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The most common activation functions can be divided into three categories: ridge functions, radial functions and fold functions.

An activation function   is saturating if  . It is nonsaturating if it is  . Non-saturating activation functions, such as ReLU, may be better than saturating activation functions, because they are less likely to suffer from the vanishing gradient problem.[8]

Ridge activation functions

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Ridge functions are multivariate functions acting on a linear combination of the input variables. Often used examples include:[clarification needed]

  • Linear activation:  ,
  • ReLU activation:  ,
  • Heaviside activation:  ,
  • Logistic activation:  .

In biologically inspired neural networks, the activation function is usually an abstraction representing the rate of action potential firing in the cell.[9] In its simplest form, this function is binary—that is, either the neuron is firing or not. Neurons also cannot fire faster than a certain rate, motivating sigmoid activation functions whose range is a finite interval.

The function looks like  , where   is the Heaviside step function.

If a line has a positive slope, on the other hand, it may reflect the increase in firing rate that occurs as input current increases. Such a function would be of the form  .

 
Rectified linear unit and Gaussian error linear unit activation functions

Radial activation functions

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A special class of activation functions known as radial basis functions (RBFs) are used in RBF networks. These activation functions can take many forms, but they are usually found as one of the following functions:

  • Gaussian:  
  • Multiquadratics:  
  • Inverse multiquadratics:  
  • Polyharmonic splines

where   is the vector representing the function center and   and   are parameters affecting the spread of the radius.

Other examples

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Periodic functions can serve as activation functions. Usually the sinusoid is used, as any periodic function is decomposable into sinusoids by the Fourier transform.[10]

Quadratic activation maps  .[11][12]

Folding activation functions

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Folding activation functions are extensively used in the pooling layers in convolutional neural networks, and in output layers of multiclass classification networks. These activations perform aggregation over the inputs, such as taking the mean, minimum or maximum. In multiclass classification the softmax activation is often used.

Table of activation functions

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The following table compares the properties of several activation functions that are functions of one fold x from the previous layer or layers:

Name Plot Function,   Derivative of  ,   Range Order of continuity
Identity          
Binary step          
Logistic, sigmoid, or soft step          
Hyperbolic tangent (tanh)          
Soboleva modified hyperbolic tangent (smht)        
Rectified linear unit (ReLU)[13]          
Gaussian Error Linear Unit (GELU)[2]          
Softplus[14]          
Exponential linear unit (ELU)[15]    
with parameter  
     
Scaled exponential linear unit (SELU)[16]    
with parameters   and  
     
Leaky rectified linear unit (Leaky ReLU)[17]          
Parametric rectified linear unit (PReLU)[18]    
with parameter  
     
Rectified Parametric Sigmoid Units (flexible, 5 parameters)
 
Rectified Parametric Sigmoid Units
 

where   [19]

     
Sigmoid linear unit (SiLU,[2] Sigmoid shrinkage,[20] SiL,[21] or Swish-‍1[22])          
Exponential Linear Sigmoid SquasHing (ELiSH)[23]  
Gaussian          
Sinusoid        

The following table lists activation functions that are not functions of a single fold x from the previous layer or layers:

Name Equation,   Derivatives,   Range Order of continuity
Softmax      for i = 1, …, J  [1][2]    
Maxout[24]        
^ Here,   is the Kronecker delta.
^ For instance,   could be iterating through the number of kernels of the previous neural network layer while   iterates through the number of kernels of the current layer.

Quantum activation functions

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In quantum neural networks programmed on gate-model quantum computers, based on quantum perceptrons instead of variational quantum circuits, the non-linearity of the activation function can be implemented with no need of measuring the output of each perceptron at each layer. The quantum properties loaded within the circuit such as superposition can be preserved by creating the Taylor series of the argument computed by the perceptron itself, with suitable quantum circuits computing the powers up to a wanted approximation degree. Because of the flexibility of such quantum circuits, they can be designed in order to approximate any arbitrary classical activation function.[25]

See also

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References

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  1. ^ Hinkelmann, Knut. "Neural Networks, p. 7" (PDF). University of Applied Sciences Northwestern Switzerland. Archived from the original (PDF) on 2018-10-06. Retrieved 2018-10-06.
  2. ^ a b c Hendrycks, Dan; Gimpel, Kevin (2016). "Gaussian Error Linear Units (GELUs)". arXiv:1606.08415 [cs.LG].
  3. ^ Hinton, Geoffrey; Deng, Li; Deng, Li; Yu, Dong; Dahl, George; Mohamed, Abdel-rahman; Jaitly, Navdeep; Senior, Andrew; Vanhoucke, Vincent; Nguyen, Patrick; Sainath, Tara; Kingsbury, Brian (2012). "Deep Neural Networks for Acoustic Modeling in Speech Recognition". IEEE Signal Processing Magazine. 29 (6): 82–97. doi:10.1109/MSP.2012.2205597. S2CID 206485943.
  4. ^ Krizhevsky, Alex; Sutskever, Ilya; Hinton, Geoffrey E. (2017-05-24). "ImageNet classification with deep convolutional neural networks". Communications of the ACM. 60 (6): 84–90. doi:10.1145/3065386. ISSN 0001-0782.
  5. ^ King Abdulaziz University; Al-johania, Norah; Elrefaei, Lamiaa; Benha University (2019-06-30). "Dorsal Hand Vein Recognition by Convolutional Neural Networks: Feature Learning and Transfer Learning Approaches" (PDF). International Journal of Intelligent Engineering and Systems. 12 (3): 178–191. doi:10.22266/ijies2019.0630.19.
  6. ^ Cybenko, G. (December 1989). "Approximation by superpositions of a sigmoidal function" (PDF). Mathematics of Control, Signals, and Systems. 2 (4): 303–314. Bibcode:1989MCSS....2..303C. doi:10.1007/BF02551274. ISSN 0932-4194. S2CID 3958369.
  7. ^ Snyman, Jan (3 March 2005). Practical Mathematical Optimization: An Introduction to Basic Optimization Theory and Classical and New Gradient-Based Algorithms. Springer Science & Business Media. ISBN 978-0-387-24348-1.
  8. ^ Krizhevsky, Alex; Sutskever, Ilya; Hinton, Geoffrey E. (2017-05-24). "ImageNet classification with deep convolutional neural networks". Communications of the ACM. 60 (6): 84–90. doi:10.1145/3065386. ISSN 0001-0782. S2CID 195908774.
  9. ^ Hodgkin, A. L.; Huxley, A. F. (1952-08-28). "A quantitative description of membrane current and its application to conduction and excitation in nerve". The Journal of Physiology. 117 (4): 500–544. doi:10.1113/jphysiol.1952.sp004764. PMC 1392413. PMID 12991237.
  10. ^ Sitzmann, Vincent; Martel, Julien; Bergman, Alexander; Lindell, David; Wetzstein, Gordon (2020). "Implicit Neural Representations with Periodic Activation Functions". Advances in Neural Information Processing Systems. 33. Curran Associates, Inc.: 7462–7473. arXiv:2006.09661.
  11. ^ Flake, Gary William (1998), Orr, Genevieve B.; Müller, Klaus-Robert (eds.), "Square Unit Augmented Radially Extended Multilayer Perceptrons", Neural Networks: Tricks of the Trade, Lecture Notes in Computer Science, vol. 1524, Berlin, Heidelberg: Springer, pp. 145–163, doi:10.1007/3-540-49430-8_8, ISBN 978-3-540-49430-0, retrieved 2024-10-05
  12. ^ Du, Simon; Lee, Jason (2018-07-03). "On the Power of Over-parametrization in Neural Networks with Quadratic Activation". Proceedings of the 35th International Conference on Machine Learning. PMLR: 1329–1338. arXiv:1803.01206.
  13. ^ Nair, Vinod; Hinton, Geoffrey E. (2010), "Rectified Linear Units Improve Restricted Boltzmann Machines", 27th International Conference on International Conference on Machine Learning, ICML'10, USA: Omnipress, pp. 807–814, ISBN 9781605589077
  14. ^ Glorot, Xavier; Bordes, Antoine; Bengio, Yoshua (2011). "Deep sparse rectifier neural networks" (PDF). International Conference on Artificial Intelligence and Statistics.
  15. ^ Clevert, Djork-Arné; Unterthiner, Thomas; Hochreiter, Sepp (2015-11-23). "Fast and Accurate Deep Network Learning by Exponential Linear Units (ELUs)". arXiv:1511.07289 [cs.LG].
  16. ^ Klambauer, Günter; Unterthiner, Thomas; Mayr, Andreas; Hochreiter, Sepp (2017-06-08). "Self-Normalizing Neural Networks". Advances in Neural Information Processing Systems. 30 (2017). arXiv:1706.02515.
  17. ^ Maas, Andrew L.; Hannun, Awni Y.; Ng, Andrew Y. (June 2013). "Rectifier nonlinearities improve neural network acoustic models". Proc. ICML. 30 (1). S2CID 16489696.
  18. ^ He, Kaiming; Zhang, Xiangyu; Ren, Shaoqing; Sun, Jian (2015-02-06). "Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification". arXiv:1502.01852 [cs.CV].
  19. ^ Atto, Abdourrahmane M.; Galichet, Sylvie; Pastor, Dominique; Méger, Nicolas (2023), "On joint parameterizations of linear and nonlinear functionals in neural networks", Elsevier Pattern Recognition
  20. ^ Atto, Abdourrahmane M.; Pastor, Dominique; Mercier, Grégoire (2008), "Smooth sigmoid wavelet shrinkage for non-parametric estimation" (PDF), 2008 IEEE International Conference on Acoustics, Speech and Signal Processing, pp. 3265–3268, doi:10.1109/ICASSP.2008.4518347, ISBN 978-1-4244-1483-3, S2CID 9959057
  21. ^ Elfwing, Stefan; Uchibe, Eiji; Doya, Kenji (2018). "Sigmoid-Weighted Linear Units for Neural Network Function Approximation in Reinforcement Learning". Neural Networks. 107: 3–11. arXiv:1702.03118. doi:10.1016/j.neunet.2017.12.012. PMID 29395652. S2CID 6940861.
  22. ^ Ramachandran, Prajit; Zoph, Barret; Le, Quoc V (2017). "Searching for Activation Functions". arXiv:1710.05941 [cs.NE].
  23. ^ Basirat, Mina; Roth, Peter M. (2018-08-02), The Quest for the Golden Activation Function, arXiv:1808.00783, retrieved 2024-10-05
  24. ^ Goodfellow, Ian J.; Warde-Farley, David; Mirza, Mehdi; Courville, Aaron; Bengio, Yoshua (2013). "Maxout Networks". JMLR Workshop and Conference Proceedings. 28 (3): 1319–1327. arXiv:1302.4389.
  25. ^ Maronese, Marco; Destri, Claudio; Prati, Enrico (2022). "Quantum activation functions for quantum neural networks". Quantum Information Processing. 21 (4): 128. arXiv:2201.03700. Bibcode:2022QuIP...21..128M. doi:10.1007/s11128-022-03466-0. ISSN 1570-0755.

Further reading

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