cs.AI updates on arXiv.org 07月14日 12:08
On the Principles of ReLU Networks with One Hidden Layer
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本文系统研究了双层神经网络机制,通过构建通用函数逼近解,揭示了训练过程和解决方案,为理解深层ReLU网络提供理论基础。

arXiv:2411.06728v2 Announce Type: replace-cross Abstract: A neural network with one hidden layer or a two-layer network (regardless of the input layer) is the simplest feedforward neural network, whose mechanism may be the basis of more general network architectures. However, even to this type of simple architecture, it is also a ``black box''; that is, it remains unclear how to interpret the mechanism of its solutions obtained by the back-propagation algorithm and how to control the training process through a deterministic way. This paper systematically studies the first problem by constructing universal function-approximation solutions. It is shown that, both theoretically and experimentally, the training solution for the one-dimensional input could be completely understood, and that for a higher-dimensional input can also be well interpreted to some extent. Those results pave the way for thoroughly revealing the black box of two-layer ReLU networks and advance the understanding of deep ReLU networks.

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神经网络 双层网络 ReLU网络 机制研究 训练过程
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