Transfer Functions in Artificial Neural Networks - A Simulation-Based Tutorial
Data(s) |
03/07/2005
04/07/2005
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Resumo |
Artificial neural networks are based on computational units that resemble basic information processing properties of biological neurons in an abstract and simplified manner. Generally, these formal neurons model an input-output behaviour as it is also often used to characterize biological neurons. The neuron is treated as a black box; spatial extension and temporal dynamics present in biological neurons are most often neglected. Even though artificial neurons are simplified, they can show a variety of input-output relations, depending on the transfer functions they apply. This unit on transfer functions provides an overview of different transfer functions and offers a simulation that visualizes the input-output behaviour of an artificial neuron depending on the specific combination of transfer functions. |
Identificador |
urn:nbn:de:0009-3-1515 |
Idioma(s) |
eng |
Direitos |
DPPL |
Fonte |
Brains, Minds and Media ; 2005 , 1 |
Palavras-Chave | #ANN #activation function #output function #education #simulation #ddc: N3985 |