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Robust Beamforming by a Globally Convergent MCA Neural Network

机译:由全球收敛的MCA神经网络强制波束成形

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Minor component analysis (MCA) by neural networks approach has attracted many attentions in the field of neural networks. Convergent learning algorithms of MCA neural networks are very important and useful for applications. In this paper, a globally convergent learning algorithm for MCA neural network is reviewed. Rigorous mathematical proof of global convergence is given and exponential convergence rate is obtained. Comparison experiments illustrate that this algorithm has good performance on beamforming problem.
机译:神经网络方法的次要分量分析(MCA)吸引了神经网络领域的许多关注。 MCA神经网络的收敛学习算法非常重要,适用于应用。本文回顾了全局收敛学习算法。给出了全局收敛的严格数学证据,并获得指数收敛速率。比较实验说明该算法对波束形成问题具有良好的性能。

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