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An Improved Online quasi-Newton method for robust training and its application to microwave neural network models

机译:改进的在线拟牛顿鲁棒训练方法及其在微波神经网络模型中的应用

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This paper describes a new technique for robust training of feedforward neural networks. The proposed algorithm is employed for the robust neural network training purpose. The quasi-Newton method was studied as one of the most efficient optimization algorithms based on the gradient descent and used as the batch training method of neural networks. On the other hand, the stochastic (online) quasi-Newton method was developed as an algorithm for the machine learning. In this paper the stochastic quasi-Newton training algorithm is improved for robust neural network training. Neural network training for some benchmark problems is presented to demonstrate the proposed algorithm. Furthermore, neural network training for microwave circuit modeling, such as the waveguide and the microstrip examples is presented, demonstrating that the proposed algorithm achieves more accurate models than both the batch and the stochastic quasi-Newton methods.
机译:本文介绍了一种用于鲁棒训练前馈神经网络的新技术。该算法用于鲁棒神经网络训练。准牛顿法是基于梯度下降的最有效的优化算法之一,被用作神经网络的批量训练方法。另一方面,随机(在线)拟牛顿法被发展为一种用于机器学习的算法。本文针对随机神经网络训练对随机准牛顿训练算法进行了改进。提出了针对一些基准问题的神经网络训练,以证明所提出的算法。此外,提出了用于微波电路建模的神经网络训练方法,例如波导和微带线示例,这表明该算法比批处理方法和随机准牛顿方法均能实现更准确的模型。

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