神经网络向量化
From Ufldl
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== Forward propagation == | == Forward propagation == | ||
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Consider a 3 layer neural network (with one input, one hidden, and one output layer), and suppose <tt>x</tt> is a column vector containing a single training example <math>x^{(i)} \in \Re^{n}</math> . Then the forward propagation step is given by: | Consider a 3 layer neural network (with one input, one hidden, and one output layer), and suppose <tt>x</tt> is a column vector containing a single training example <math>x^{(i)} \in \Re^{n}</math> . Then the forward propagation step is given by: | ||
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- | 正向传导 | + | ==正向传导== |
- | 我们考虑一个三层的神经网络(一个输入层、一个隐含层、以及一个输出层),并且假定<tt>x</tt>是包含一个单一训练样本 <math>x^{(i)} \in \Re^{n}</math> 的列向量。则正向传导的步骤可以如下: | + | |
+ | 初译: 我们考虑一个三层的神经网络(一个输入层、一个隐含层、以及一个输出层),并且假定<tt>x</tt>是包含一个单一训练样本 <math>x^{(i)} \in \Re^{n}</math> 的列向量。则正向传导的步骤可以如下: | ||
一审: | 一审: |