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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Local minima and plateaus in hierarchical structures of multilayer perceptrons.
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Local minima and plateaus in hierarchical structures of multilayer perceptrons.

机译:多层感知器的分层结构中的局部极小值和高原。

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摘要

Local minima and plateaus pose a serious problem in learning of neural networks. We investigate the hierarchical geometric structure of the parameter space of three-layer perceptrons in order to show the existence of local minima and plateaus. It is proved that a critical point of the model with H - 1 hidden units always gives many critical points of the model with H hidden units. These critical points consist of many lines in the parameter space, which can cause plateaus in learning of neural networks. Based on this result, we prove that a point in the critical lines corresponding to the global minimum of the smaller model can be a local minimum or a saddle point of the larger model. We give a necessary and sufficient condition for this, and show that this kind of local minima exist as a line segment if any. The results are universal in the sense that they do not require special properties of the target, loss functions and activation functions, but only use the hierarchical structure of the model.
机译:局部极小值和高原在神经网络的学习中提出了一个严重的问题。我们研究了三层感知器参数空间的分层几何结构,以显示局部极小值和高原的存在。证明了具有H-1个隐藏单元的模型的临界点总是会给出具有H个隐藏单元的模型的许多临界点。这些临界点由参数空间中的多条线组成,这可能会导致神经网络学习停滞。基于此结果,我们证明临界线中与较小模型的全局最小值对应的点可以是局部最小值或较大模型的鞍点。我们为此提供了一个必要和充分的条件,并表明这种局部最小值作为线段(如果有)存在。结果是通用的,因为它们不需要目标的特殊属性,损失函数和激活函数,而仅使用模型的层次结构。

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