Smoothing Supervised Learning of Neural Networks for Function Approximation

T. Nguyen
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引用次数: 3

Abstract

Two popular hazards in supervised learning of neural networks are local minima and over fitting. Application of the momentum technique dealing with the local optima has proved efficient but it is vulnerable to over fitting. In contrast, deployment of the early stopping technique might overcome the over fitting phenomena but it sometimes terminates into the local minima. This paper proposes a hybrid approach, which is a combination of two processing neurons: momentum and early stopping, to tackle these hazards, aiming at improving the performance of neural networks in terms of both accuracy and processing time in function approximation. Experimental results conducted on various kinds of non-linear functions have demonstrated that the proposed approach is dominant compared with conventional learning approaches.
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用于函数逼近的神经网络平滑监督学习
神经网络监督学习中两个常见的危害是局部最小值和过拟合。应用动量技术处理局部最优是有效的,但容易出现过拟合的问题。相比之下,早期停止技术的部署可以克服过拟合现象,但有时会终止到局部最小值。本文提出了一种混合方法,即结合两个处理神经元:动量和早期停止,以解决这些危险,旨在提高神经网络在函数逼近中的精度和处理时间。对各种非线性函数的实验结果表明,与传统的学习方法相比,该方法具有优势。
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