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A new learning method using prior information of neural networks

机译:利用神经网络先验信息的新学习方法

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In this paper, we present a new learning method using prior information for three-layered neural networks. Usually when neural networks are used for identification of systems, all of their weights are trained independently, without considering their interrelation of weight values. Thus the training results are not usually good. The reason for this is that each parameter has its influence on others during the learning. To overcome this problem, first, we give an exact mathematical equation that describes the relation between weight values given by a set of data conveying prior information. Then we present a new learning method that trains a part of the weights and calculates the others by using these exact mathematical equations. In almost all cases, this method keeps prior information given by a mathematical structure exactly during the learning. In addition, a learning method using prior information expressed by inequality is also presented. In any case, the degree of freedom of networks (the number of adjustable weights) is appropriately limited in order to speed up the learning and ensure small errors. Numerical computer simulation results are provided to support the present approaches.
机译:在本文中,我们提出了一种使用先验信息的三层神经网络学习方法。通常,当将神经网络用于系统识别时,它们的所有权重都是独立训练的,而无需考虑它们的权重值之间的相互关系。因此,训练结果通常不好。这样做的原因是每个参数在学习过程中都会对其他参数产生影响。为了克服这个问题,首先,我们给出一个精确的数学方程式,该方程式描述了一组传递先验信息的数据给定的权重值之间的关系。然后,我们提出了一种新的学习方法,该方法可以训练一部分权重,并使用这些精确的数学方程式来计算其他权重。在几乎所有情况下,该方法都会在学习过程中准确地保留数学结构给出的先验信息。此外,还提出了一种使用不等式表示的先验信息的学习方法。在任何情况下,网络的自由度(可调整权重的数量)都受到适当限制,以加快学习速度并确保较小的错误。提供数值计算机仿真结果以支持本方法。

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