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A low-complexity fuzzy activation function for artificial neural networks.

E Soria-OlivasJ D Martin-GuerreroG Camps-VallsA J Serrano-LopezJ Calpe-MaravillaL Gomez-Chova
Published in: IEEE transactions on neural networks (2012)
A novel fuzzy-based activation function for artificial neural networks is proposed. This approach provides easy hardware implementation and straightforward interpretability in the basis of IF-THEN rules. Backpropagation learning with the new activation function also has low computational complexity. Several application examples ( XOR gate, chaotic time-series prediction, channel equalization, and independent component analysis) support the potential of the proposed scheme.
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