In this book, a new approach is proposed to build neural network
architectures. Previous works are used back-propagation. The major
limitation of this network that it can only learn an input - output
mapping which is static. Recurrent neural networks (RNNs) have features
that well define dynamic systems which have attracted the attention of
researches in this field. Generally, recurrent neural network requires
less neurons in its structure and less computation time. Also, they show
high immunity against external noise. In this book, a new approach is
proposed to build neural network architectures. Previous works are used
back-propagation. The major limitation of this network that it can only
learn an input - output mapping which is static. Recurrent neural
networks (RNNs) have features that well define dynamic systems which
have attracted the attention of researches in this field. Generally,
recurrent neural network requires less neurons in its structure and less
computation time. Also, they show high immunity against external noise.