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Comparison of different backpropagation training algorithms using robust M-estimators performance functions

机译:使用健壮的M估计器性能函数比较不同的反向传播训练算法

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Artificial neural networks are one of the most popular and promising areas of artificial intelligence research. Training data containing outliers are often a problem for supervised neural networks learning algorithms that may not always come up with acceptable performance. Many robust learning algorithms have been proposed so far to improve the performance of neural networks in the presence of outliers. In this paper, we investigate the performance of four different backpropagation training algorithms, which are conjugate gradient with Fletcher - Reeves updates, conjugate gradient with Polak - Ribiére updates, resilient backpropagation, and conjugate gradient with Powell - peal restart. We compare their performance in terms of Root Mean Square Error as a merit function and the training speed in seconds. Examined neural networks trained by aforementioned backpropagation learning algorithms, which used the robust M-estimators performance functions instead of MSE one, in order to get robust learning in the presence of outliers. The study results show that Traincgf is the best algorithm in terms of mean square error, while the Traincgp is the best in terms of training speed.
机译:人工神经网络是人工智能研究中最流行,最有前途的领域之一。对于监督神经网络学习算法而言,包含离群值的训练数据通常是一个问题,这些算法可能并不总是能达到可接受的性能。迄今为止,已经提出了许多鲁棒的学习算法,以在存在异常值的情况下提高神经网络的性能。在本文中,我们研究了四种不同的反向传播训练算法的性能,它们是Fletcher-Reeves更新的共轭梯度,Polak-Ribiére更新的共轭梯度,弹性反向传播以及Powell-peal重新启动的共轭梯度。我们根据均方根均方根误差和训练速度(以秒为单位)比较了它们的性能。通过上述反向传播学习算法训练的神经网络,它使用鲁棒的M估计器性能函数而不是MSE来进行训练,以便在存在异常值时获得鲁棒的学习。研究结果表明,就均方误差而言,Traincgf是最好的算法,而在训练速度方面,Traincgp是最好的算法。

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