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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Blind signal processing by the adaptive activation function neurons.
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Blind signal processing by the adaptive activation function neurons.

机译:通过自适应激活功能神经元进行盲信号处理。

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摘要

The aim of this paper is to study an Information Theory based learning theory for neural units endowed with adaptive activation functions. The learning theory has the target to force the neuron to approximate the input-output transference that makes it flat (uniform) the probability density function of its output or, equivalently, that maximizes the entropy of the neuron response. Then, a network of adaptive activation function neurons is studied, and the effectiveness of the new structure is tested on Independent Component Analysis (ICA) problems. The new ICA neural algorithm is compared with the closely related 'Mixture of Densities' (MOD) technique by Xu et al.. Both simulation results and structural comparison show the new method is effective and more efficient in computational complexity.
机译:本文的目的是研究一种基于信息论的学习理论,用于具有自适应激活功能的神经单元。学习理论的目标是迫使神经元逼近输入输出转移,使其平坦(均匀)其输出的概率密度函数,或者等效地使神经元反应的熵最大化。然后,研究了自适应激活功能神经元网络,并针对独立成分分析(ICA)问题测试了该新结构的有效性。新的ICA神经算法与Xu等人的紧密相关的“密度混合”(MOD)技术进行了比较。仿真结果和结构比较均表明,该新方法在计算复杂度方面是有效且更加高效的。

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