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An introduction to complex-valued recurrent correlation neural networks

机译:复值递归相关神经网络简介

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In this paper, we generalize the bipolar recurrent correlation neural networks (RCNNs) of Chiueh and Goodman for complex-valued vectors. A complex-valued RCNN (CV-RCNN) is characterized by a possible non-linear function which is applied on the real part of the scalar product of the current state and the fundamental vectors. Computational experiments reveal that some CV-RCNNs can implement associative memories with high-storage capacity. Furthermore, these CV-RCNNs exhibit an excellent noise tolerance.
机译:在本文中,我们推广了Chiueh和Goodman的双极递归相关神经网络(RCNN),用于复数值向量。复数值RCNN(CV-RCNN)的特征在于可能的非线性函数,该函数应用于当前状态和基本矢量的标量积的实部。计算实验表明,某些CV-RCNN可以实现具有高存储容量的关联存储器。此外,这些CV-RCNN具有出色的噪声容限。

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