{ "cells": [ { "cell_type": "markdown", "id": "36341c1f", "metadata": { "origin_pos": 0 }, "source": [ "# 多头注意力\n", ":label:`sec_multihead-attention`\n", "\n", "在实践中,当给定相同的查询、键和值的集合时,\n", "我们希望模型可以基于相同的注意力机制学习到不同的行为,\n", "然后将不同的行为作为知识组合起来,\n", "捕获序列内各种范围的依赖关系\n", "(例如,短距离依赖和长距离依赖关系)。\n", "因此,允许注意力机制组合使用查询、键和值的不同\n", "*子空间表示*(representation subspaces)可能是有益的。\n", "\n", "为此,与其只使用单独一个注意力汇聚,\n", "我们可以用独立学习得到的$h$组不同的\n", "*线性投影*(linear projections)来变换查询、键和值。\n", "然后,这$h$组变换后的查询、键和值将并行地送到注意力汇聚中。\n", "最后,将这$h$个注意力汇聚的输出拼接在一起,\n", "并且通过另一个可以学习的线性投影进行变换,\n", "以产生最终输出。\n", "这种设计被称为*多头注意力*(multihead attention)\n", " :cite:`Vaswani.Shazeer.Parmar.ea.2017`。\n", "对于$h$个注意力汇聚输出,每一个注意力汇聚都被称作一个*头*(head)。\n", " :numref:`fig_multi-head-attention`\n", "展示了使用全连接层来实现可学习的线性变换的多头注意力。\n", "\n", "![多头注意力:多个头连结然后线性变换](../img/multi-head-attention.svg)\n", ":label:`fig_multi-head-attention`\n", "\n", "## 模型\n", "\n", "在实现多头注意力之前,让我们用数学语言将这个模型形式化地描述出来。\n", "给定查询$\\mathbf{q} \\in \\mathbb{R}^{d_q}$、\n", "键$\\mathbf{k} \\in \\mathbb{R}^{d_k}$和\n", "值$\\mathbf{v} \\in \\mathbb{R}^{d_v}$,\n", "每个注意力头$\\mathbf{h}_i$($i = 1, \\ldots, h$)的计算方法为:\n", "\n", "$$\\mathbf{h}_i = f(\\mathbf W_i^{(q)}\\mathbf q, \\mathbf W_i^{(k)}\\mathbf k,\\mathbf W_i^{(v)}\\mathbf v) \\in \\mathbb R^{p_v},$$\n", "\n", "其中,可学习的参数包括\n", "$\\mathbf W_i^{(q)}\\in\\mathbb R^{p_q\\times d_q}$、\n", "$\\mathbf W_i^{(k)}\\in\\mathbb R^{p_k\\times d_k}$和\n", "$\\mathbf W_i^{(v)}\\in\\mathbb R^{p_v\\times d_v}$,\n", "以及代表注意力汇聚的函数$f$。\n", "$f$可以是 :numref:`sec_attention-scoring-functions`中的\n", "加性注意力和缩放点积注意力。\n", "多头注意力的输出需要经过另一个线性转换,\n", "它对应着$h$个头连结后的结果,因此其可学习参数是\n", "$\\mathbf W_o\\in\\mathbb R^{p_o\\times h p_v}$:\n", "\n", "$$\\mathbf W_o \\begin{bmatrix}\\mathbf h_1\\\\\\vdots\\\\\\mathbf h_h\\end{bmatrix} \\in \\mathbb{R}^{p_o}.$$\n", "\n", "基于这种设计,每个头都可能会关注输入的不同部分,\n", "可以表示比简单加权平均值更复杂的函数。\n" ] }, { "cell_type": "code", "execution_count": 1, "id": "dc55ba33", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:01:32.189972Z", "iopub.status.busy": "2023-08-18T07:01:32.189240Z", "iopub.status.idle": "2023-08-18T07:01:34.516491Z", "shell.execute_reply": "2023-08-18T07:01:34.515475Z" }, "origin_pos": 2, "tab": [ "pytorch" ] }, "outputs": [], "source": [ "import math\n", "import torch\n", "from torch import nn\n", "from d2l import torch as d2l" ] }, { "cell_type": "markdown", "id": "b51ca181", "metadata": { "origin_pos": 5 }, "source": [ "## 实现\n", "\n", "在实现过程中通常[**选择缩放点积注意力作为每一个注意力头**]。\n", "为了避免计算代价和参数代价的大幅增长,\n", "我们设定$p_q = p_k = p_v = p_o / h$。\n", "值得注意的是,如果将查询、键和值的线性变换的输出数量设置为\n", "$p_q h = p_k h = p_v h = p_o$,\n", "则可以并行计算$h$个头。\n", "在下面的实现中,$p_o$是通过参数`num_hiddens`指定的。\n" ] }, { "cell_type": "code", "execution_count": 2, "id": "1bb10990", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:01:34.521491Z", "iopub.status.busy": "2023-08-18T07:01:34.521131Z", "iopub.status.idle": "2023-08-18T07:01:34.530492Z", "shell.execute_reply": "2023-08-18T07:01:34.529556Z" }, "origin_pos": 7, "tab": [ "pytorch" ] }, "outputs": [], "source": [ "#@save\n", "class MultiHeadAttention(nn.Module):\n", " \"\"\"多头注意力\"\"\"\n", " def __init__(self, key_size, query_size, value_size, num_hiddens,\n", " num_heads, dropout, bias=False, **kwargs):\n", " super(MultiHeadAttention, self).__init__(**kwargs)\n", " self.num_heads = num_heads\n", " self.attention = d2l.DotProductAttention(dropout)\n", " self.W_q = nn.Linear(query_size, num_hiddens, bias=bias)\n", " self.W_k = nn.Linear(key_size, num_hiddens, bias=bias)\n", " self.W_v = nn.Linear(value_size, num_hiddens, bias=bias)\n", " self.W_o = nn.Linear(num_hiddens, num_hiddens, bias=bias)\n", "\n", " def forward(self, queries, keys, values, valid_lens):\n", " # queries,keys,values的形状:\n", " # (batch_size,查询或者“键-值”对的个数,num_hiddens)\n", " # valid_lens 的形状:\n", " # (batch_size,)或(batch_size,查询的个数)\n", " # 经过变换后,输出的queries,keys,values 的形状:\n", " # (batch_size*num_heads,查询或者“键-值”对的个数,\n", " # num_hiddens/num_heads)\n", " queries = transpose_qkv(self.W_q(queries), self.num_heads)\n", " keys = transpose_qkv(self.W_k(keys), self.num_heads)\n", " values = transpose_qkv(self.W_v(values), self.num_heads)\n", "\n", " if valid_lens is not None:\n", " # 在轴0,将第一项(标量或者矢量)复制num_heads次,\n", " # 然后如此复制第二项,然后诸如此类。\n", " valid_lens = torch.repeat_interleave(\n", " valid_lens, repeats=self.num_heads, dim=0)\n", "\n", " # output的形状:(batch_size*num_heads,查询的个数,\n", " # num_hiddens/num_heads)\n", " output = self.attention(queries, keys, values, valid_lens)\n", "\n", " # output_concat的形状:(batch_size,查询的个数,num_hiddens)\n", " output_concat = transpose_output(output, self.num_heads)\n", " return self.W_o(output_concat)" ] }, { "cell_type": "markdown", "id": "9ab1c33b", "metadata": { "origin_pos": 10 }, "source": [ "为了能够[**使多个头并行计算**],\n", "上面的`MultiHeadAttention`类将使用下面定义的两个转置函数。\n", "具体来说,`transpose_output`函数反转了`transpose_qkv`函数的操作。\n" ] }, { "cell_type": "code", "execution_count": 3, "id": "b2af5ed8", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:01:34.534820Z", "iopub.status.busy": "2023-08-18T07:01:34.534308Z", "iopub.status.idle": "2023-08-18T07:01:34.540852Z", "shell.execute_reply": "2023-08-18T07:01:34.539927Z" }, "origin_pos": 12, "tab": [ "pytorch" ] }, "outputs": [], "source": [ "#@save\n", "def transpose_qkv(X, num_heads):\n", " \"\"\"为了多注意力头的并行计算而变换形状\"\"\"\n", " # 输入X的形状:(batch_size,查询或者“键-值”对的个数,num_hiddens)\n", " # 输出X的形状:(batch_size,查询或者“键-值”对的个数,num_heads,\n", " # num_hiddens/num_heads)\n", " X = X.reshape(X.shape[0], X.shape[1], num_heads, -1)\n", "\n", " # 输出X的形状:(batch_size,num_heads,查询或者“键-值”对的个数,\n", " # num_hiddens/num_heads)\n", " X = X.permute(0, 2, 1, 3)\n", "\n", " # 最终输出的形状:(batch_size*num_heads,查询或者“键-值”对的个数,\n", " # num_hiddens/num_heads)\n", " return X.reshape(-1, X.shape[2], X.shape[3])\n", "\n", "\n", "#@save\n", "def transpose_output(X, num_heads):\n", " \"\"\"逆转transpose_qkv函数的操作\"\"\"\n", " X = X.reshape(-1, num_heads, X.shape[1], X.shape[2])\n", " X = X.permute(0, 2, 1, 3)\n", " return X.reshape(X.shape[0], X.shape[1], -1)" ] }, { "cell_type": "markdown", "id": "0e31b376", "metadata": { "origin_pos": 15 }, "source": [ "下面使用键和值相同的小例子来[**测试**]我们编写的`MultiHeadAttention`类。\n", "多头注意力输出的形状是(`batch_size`,`num_queries`,`num_hiddens`)。\n" ] }, { "cell_type": "code", "execution_count": 4, "id": "d06baadf", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:01:34.545405Z", "iopub.status.busy": "2023-08-18T07:01:34.544605Z", "iopub.status.idle": "2023-08-18T07:01:34.571251Z", "shell.execute_reply": "2023-08-18T07:01:34.570476Z" }, "origin_pos": 17, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "MultiHeadAttention(\n", " (attention): DotProductAttention(\n", " (dropout): Dropout(p=0.5, inplace=False)\n", " )\n", " (W_q): Linear(in_features=100, out_features=100, bias=False)\n", " (W_k): Linear(in_features=100, out_features=100, bias=False)\n", " (W_v): Linear(in_features=100, out_features=100, bias=False)\n", " (W_o): Linear(in_features=100, out_features=100, bias=False)\n", ")" ] }, "execution_count": 4, "metadata": {}, "output_type": "execute_result" } ], "source": [ "num_hiddens, num_heads = 100, 5\n", "attention = MultiHeadAttention(num_hiddens, num_hiddens, num_hiddens,\n", " num_hiddens, num_heads, 0.5)\n", "attention.eval()" ] }, { "cell_type": "code", "execution_count": 5, "id": "8da65afc", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:01:34.574642Z", "iopub.status.busy": "2023-08-18T07:01:34.574021Z", "iopub.status.idle": "2023-08-18T07:01:34.588848Z", "shell.execute_reply": "2023-08-18T07:01:34.587945Z" }, "origin_pos": 20, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "torch.Size([2, 4, 100])" ] }, "execution_count": 5, "metadata": {}, "output_type": "execute_result" } ], "source": [ "batch_size, num_queries = 2, 4\n", "num_kvpairs, valid_lens = 6, torch.tensor([3, 2])\n", "X = torch.ones((batch_size, num_queries, num_hiddens))\n", "Y = torch.ones((batch_size, num_kvpairs, num_hiddens))\n", "attention(X, Y, Y, valid_lens).shape" ] }, { "cell_type": "markdown", "id": "c228d916", "metadata": { "origin_pos": 22 }, "source": [ "## 小结\n", "\n", "* 多头注意力融合了来自于多个注意力汇聚的不同知识,这些知识的不同来源于相同的查询、键和值的不同的子空间表示。\n", "* 基于适当的张量操作,可以实现多头注意力的并行计算。\n", "\n", "## 练习\n", "\n", "1. 分别可视化这个实验中的多个头的注意力权重。\n", "1. 假设有一个完成训练的基于多头注意力的模型,现在希望修剪最不重要的注意力头以提高预测速度。如何设计实验来衡量注意力头的重要性呢?\n" ] }, { "cell_type": "markdown", "id": "bfae5c77", "metadata": { "origin_pos": 24, "tab": [ "pytorch" ] }, "source": [ "[Discussions](https://discuss.d2l.ai/t/5758)\n" ] } ], "metadata": { "language_info": { "name": "python" }, "required_libs": [] }, "nbformat": 4, "nbformat_minor": 5 }