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A learning algorithm for multi-layer perceptrons with hard-limiting threshold units

机译:具有硬限制阈值单元的多层的学习算法

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We propose a novel learning algorithm to train networks with multilayer linear-threshold or hard-limiting units. The learning scheme is based on the standard backpropagation, but with "pseudo-gradient" descent, which uses the gradient of a sigmoid function as a heuristic hint in place of that of the hard-limiting function. A justification that the pseudo-gradient always points in the right down hill direction in error surface for networks with one hidden layer is provided. The advantages of such networks are that their internal representations in the hidden layers are clearly interpretable, and well-defined classification rules can be easily obtained, that calculations for classifications after training are very simple, and that they are easily implementable in hardware. Comparative experimental results on several benchmark problems using both the conventional backpropagation networks and our learning scheme for multilayer perceptrons are presented and analyzed.
机译:我们提出了一种新颖的学习算法来培训具有多层线性阈值或硬限制单元的网络。学习方案基于标准的反向化,但是使用“伪梯度”下降,其使用SIGMOID函数的梯度作为启发式提示来代替硬限制功能的启发式暗示。提供了一个对伪梯度在右下山上方向上的误差表面的误差表面,用于带有一个隐藏层的网络的误差表面。这种网络的优点是它们在隐藏层中的内部表示清晰可解释,并且可以很容易地获得明确定义的分类规则,培训后的分类计算非常简单,并且它们在硬件中容易可实现。呈现和分析了使用传统反向化网络的几种基准问题的比较实验结果,并分析了多层感知的多层感知网络的若干基准问题。

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