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第560章 用一个故事解释复合函数(2 / 2)

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在人工智能(AI),特别是深度学习(Deep Learning)中,复合函数是整个模型的核心结构。神经网络的计算过程本质上就是一系列复合函数的嵌套,它决定了输入如何被逐层转换,最终得到模型的预测输出。

1. 神经网络是复合函数的堆叠

我们可以把一个**深度神经网络(DNN)**看作是多个函数的复合。例如,一个典型的神经网络从输入到输出的计算过程如下:

? :第一层的计算(比如线性变换 + 激活函数)

? :第二层的计算

? :最终输出层

这和复合函数 的概念完全一致,只不过在神经网络中,有更多层的嵌套。

类比故事:AI 也是在“炼制智慧药水”

就像炼金术士艾尔文用多层处理的方法炼制智慧药水一样,AI 也需要一层一层地处理信息:

? 第一层:从原始数据中提取基本特征(类似于提取魔法精华)

? 中间层:进一步转换特征,使其更具意义(类似于化学转化)

? 最终层:输出结果,例如预测类别或数值(类似于最终的智慧药水)

2. 反向传播依赖复合函数的链式法则

在 AI 训练过程中,我们要不断优化神经网络,使其预测结果更准确。这依赖于反向传播算法(Backpropagation),它的核心就是链式法则(Chain Rule),用于计算复合函数的导数。

如果损失函数 是输出 的函数,而 又是隐藏层输出 的函数,那么梯度计算就是:

这说明:

? 误差从最后一层向前传播,每一层都通过链式法则计算自己的贡献,逐层调整参数,使模型更精确。

3. 复合函数让神经网络具备更强的表达能力

如果只用一个简单的函数(如线性函数 ),AI 只能学到最简单的关系,无法处理复杂的数据模式。而深度神经网络通过复合函数的多层变换,能够学习复杂的非线性关系,比如:

? 图像识别(从像素到对象识别)

? 语音识别(从音频信号到文本)

? 自然语言处理(从句子到语义理解)

这些应用之所以有效,正是因为复合函数的多层嵌套使得 AI 能够学习从低级特征到高级语义的映射。

结论

? 神经网络的本质是复合函数,每一层都将前一层的输出作为输入,最终计算出预测结果。

? 反向传播依赖于链式法则,用来计算复合函数的梯度,使得模型可以优化。

? 复合函数增强了 AI 的学习能力,使神经网络能够逐层提取复杂特征,处理各种高难度任务。

复合函数的概念,是 AI 发展的基石!

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