A multi-layered perceptron type neural network is presented and analyzed in this paper. All neuronal parameters such as input, output, action potential and connection weight are encoded by quaternions, which are a class of hypercomplex number system. Local analytic condition is imposed on the activation function in updating neurons' states in order to construct learning algorithm for this network. An error back-propagation algorithm is introduced for modifying the connection weights of the network. © 2012 by the authors.
CITATION STYLE
Isokawa, T., Nishimura, H., & Matsui, N. (2012). Quaternionic multilayer perceptron with local analyticity. Information (Switzerland), 3(4), 756–770. https://doi.org/10.3390/info3040756
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