On the number of training points needed for adequate training of feedforward neural networks

K. Hashemi, R. J. Thomas
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引用次数: 3

Abstract

The authors address the problem of training neural networks to act as approximations of continuous mappings. In the case where the only representation of the mapping within the training process is through a finite set of training points, they show that in order for this set of points to provide an adequate representation of the mapping, it must contain a number of points which rises at least exponentially quickly with the dimension of the input space. Thus they also show that the time taken to train the networks will rise at least exponentially quickly with the dimension of the input. They conclude that if the only training algorithms available rely upon a finite training set, then the application of neural networks to the approximation problem is impractical whenever the dimension of the input is large. By extrapolating their experimental results, they estimate that 'large' in this respect means 'greater than ten'.<>
关于充分训练前馈神经网络所需的训练点数量
作者解决了训练神经网络作为连续映射近似的问题。在训练过程中映射的唯一表示是通过一组有限的训练点的情况下,他们表明,为了让这组点提供映射的充分表示,它必须包含一些点,这些点至少随着输入空间的维数呈指数级增长。因此,他们还表明,训练网络所花费的时间至少会随着输入的维度呈指数级增长。他们的结论是,如果唯一可用的训练算法依赖于有限的训练集,那么每当输入的维度很大时,将神经网络应用于近似问题是不切实际的。通过外推他们的实验结果,他们估计在这方面的“大”意味着“大于10”
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