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Learning neural networks with respect to tolerances to weight errors

机译:学习有关重量误差容忍度的神经网络

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The problem of neural network learning to get the most convenient configuration, i.e., the vector of synaptic weights and thresholds of formal neurons creating the network, is treated. The possible errors in keeping precise the designed configuration during the realization as well as fluctuations of the configuration during the net exploitation are taken into account using the theory of tolerances. A cumulative loss function that expresses the loss evoked by imprecise learning is introduced, allowing the mathematical formalism used in the theory of tolerances and sensitivity to be applied. Learning is expressed as the problem of maximization of the volume of the area in the configuration space where the neural network exhibits small values of the cumulative loss function. The general task of synthesizing the parameters and their tolerances is shown to be a nonconvex problem of stochastic optimization with stochastic constraints, and a stochastic approximation algorithm for solving this problem is given. Results of teaching a three-layer feedforward network are given.
机译:解决了神经网络学习以获得最方便的配置的问题,即创建网络的突触权重和形式神经元阈值的向量。使用公差理论考虑了在实现过程中保持精确设计配置的可能误差以及在网络开发过程中配置的波动。引入了表示不精确学习引起的损失的累积损失函数,从而允许应用在公差和灵敏度理论中使用的数学形式主义。学习表示为配置空间中的区域体积最大化的问题,在该配置空间中,神经网络表现出较小的累积损耗函数值。合成参数及其容差的一般任务被证明是具有随机约束的随机优化的非凸问题,并给出了解决该问题的随机逼近算法。给出了教授三层前馈网络的结果。

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