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On the Learning Machine with Amplificatory Neuron in Complex Domain

机译:在复杂域中的扩增神经元的学习机

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摘要

The processing of complex-valued signals through neural networks is the important and challenging fields in image processing and digital signal processing. The networks with linear neurons in complex domain have been proposed in the various literatures, but its convergence capability and computational power are not up the mark. In the various researches, it has been mentioned that nonlinear aggregation of input signals provides better computational capability as compared to linear aggregation. These evidences motivated to design a new nonlinear aggregation operation. In this paper, a new artificial neuron structure based on nonlinear aggregation of complex-valued input signals is proposed. The learning rule of network with proposed neurons is also addressed to achieve faster learning and better computational power. Its aggregation operation is based on the product of different weighted arrangement of inputs with bias signals instead of summation. This product exhibits nonlinearity that amplifies the aggregation operation of the proposed new neuron and named as AMPlificatory neuron in Complex domain (C-AMP). The training and testing processes of the three-layered network with C-AMP neurons are performed through standard classification, prediction, and function approximation problems for evaluating the computational capability of the proposed neuron and compared with existing neuron models. Results of training and testing processes for these problems through proposed work ensure better training, faster convergence, excellent generalization ability, and significant prediction accuracy with lesser network topology as compared to conventional neuron models. The excellent generalization for 2D transformation problems also shows the significant capability of C-AMP neuron.
机译:通过神经网络处理复值信号是图像处理和数字信号处理中的重要且具有挑战性的场。在各种文献中提出了复杂结构域中具有线性神经元的网络,但其收敛能力和计算能力不是标记。在各种研究中,已提及输入信号的非线性聚合,与线性聚合相比提供更好的计算能力。这些证据有动力设计新的非线性聚集操作。本文提出了一种基于复值输入信号的非线性聚集的新的人造神经元结构。拟议神经元的网络学习规则也被解决以实现更快的学习和更好的计算能力。其聚合操作基于具有偏置信号而不是求和的不同加权排列的乘积。本产品表现出非线性,可放大所提出的新神经元的聚集操作,并在复杂结构域(C-AMP)中命名为扩增神经元。通过标准分类,预测和功能近似问题进行三层网络的三层网络的训练和测试过程,用于评估所提出的神经元的计算能力并与现有的神经元模型进行比较。通过拟议的工作培训和测试过程的结果,可确保更好的培训,更快的收敛,优异的泛化能力,以及与传统神经元模型相比具有较小的网络拓扑的显着预测准确性。 2D转化问题的优异概括也表明了C-AMP神经元的显着性。

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