V2EX backpropagation

Backpropagation

释义 Definition

反向传播(算法):一种用于训练神经网络的核心方法。它通过比较模型输出与真实答案的误差,把误差信号从输出层向后逐层传回,并利用链式法则计算各层参数(权重、偏置)的梯度,从而用梯度下降等方法更新参数、降低损失函数。(在深度学习语境中常简称 backprop。)

发音 Pronunciation (IPA)

/bkprpen/

例句 Examples

Backpropagation helps the network learn from its mistakes.
反向传播帮助神经网络从错误中学习。

To train the model, we used backpropagation to compute gradients efficiently across many layers.
为了训练该模型,我们使用反向传播在多层网络中高效计算梯度。

词源 Etymology

Backpropagation 由 **back-**(向后)+ propagation(传播、传递)构成,字面意思是“向后传播”。在机器学习中,它指把误差(或梯度)从输出端向网络前面的层“反向传递”,以便计算每个参数对误差的贡献并进行更新。

相关词 Related Words

文学与著作 Literary / Works

  • Rumelhart, Hinton & Williams (1986), Learning representations by back-propagating errors(经典论文,系统推动反向传播在神经网络训练中的普及)
  • Ian Goodfellow, Yoshua Bengio & Aaron Courville (2016), Deep Learning(教材中对反向传播与计算图、梯度计算有系统讲解)
  • Michael A. Nielsen (2015), Neural Networks and Deep Learning(面向学习者的入门著作,直观解释反向传播的工作方式)
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