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这篇文章给大家介绍怎么在Pytorch中利用CharRNN实现文本分类,内容非常详细,感兴趣的小伙伴们可以参考借鉴,希望对大家能有所帮助。
创新互联建站是一家集网站制作、成都网站制作、网站页面设计、网站优化SEO优化为一体的专业网络公司,已为成都等多地近百家企业提供网站建设服务。追求良好的浏览体验,以探求精品塑造与理念升华,设计最适合用户的网站页面。 合作只是第一步,服务才是根本,我们始终坚持讲诚信,负责任的原则,为您进行细心、贴心、认真的服务,与众多客户在蓬勃发展的市场环境中,互促共生。import torch from torch import nn embedding = nn.Embedding(5, 4) # 假定语料只有5个词,词向量维度为3 sents = [[1, 2, 3], [2, 3, 4]] # 两个句子,how:1 are:2 you:3, are:2 you:3 ok:4 embed = embedding(torch.LongTensor(sents)) print(embed) # shape=(2 ''' tensor([[[-0.6991, -0.3340, -0.7701, -0.6255], [ 0.2969, 0.4720, -0.9403, 0.2982], [ 0.8902, -1.0681, 0.4035, 0.1645]], [[ 0.2969, 0.4720, -0.9403, 0.2982], [ 0.8902, -1.0681, 0.4035, 0.1645], [-0.7944, -0.1766, -1.5941, 0.4544]]], grad_fn=) '''
2.2 nn.RNN
RNN是NLP的常用模型,普通的RNN单元结构如下图所示:
RNN单元还有一些变体,主要是单元内部的激活函数不同或数据使用了不同计算。RNN每个单元存在输入x与上一时刻的隐层状态h,输出有y与当前时刻的隐层状态。
对RNN单元的改进有LSTM和GRU,这三种类型的模型的输入数据都需要3D的tensor,,,使用时设置b atch_first为true时,输入数据的shape为[batch,seq_length, input_dim],第一维为batch的数量不使用时设置为1,第二维序列的长度,第三维为输入的维度,通常为词嵌入的维度。
rnn = RNN(input_dim, hidden_dim, num_layers=1, batch_first, bidirectional)
input_dim 输入token的特征数量,使用embeding时为嵌入的维度
hidden_dim 隐层的单元数,决定RNN的输出长度
num_layers 层数
batch_frist 第一维为batch,反之第一堆为seq_len,默认为False
bidirectional 是否为双向RNN,默认为False
output, hidden = rnn(input, hidden)
input 一批输入数据,shape为[batch, seq_len, input_dim]
hidden 上一时刻的隐层状态,shape为[num_layers * num_directions, batch, hidden_dim]
output 当前时刻的输出,shape为[batch, seq_len, num_directions*hidden_dim]
import torch from torch import nn vocab_size = 5 embed_dim = 3 hidden_dim = 8 embedding = nn.Embedding(vocab_size, embed_dim) rnn = nn.RNN(embed_dim, hidden_dim, batch_first=True) sents = [[1, 2, 4], [2, 3, 4]] h0 = torch.zeros(1, embeded.size(0), 8) # shape=(num_layers*num_directions, batch, hidden_dim) embeded = embedding(torch.LongTensor(sents)) out, hidden = rnn(embeded, h0) # out.shape=(2,3,8), hidden.shape=(1,2,8) print(out, hidden) ''' tensor([[[-0.1556, -0.2721, 0.1485, -0.2081, -0.2231, -0.1459, -0.0319, 0.2617], [-0.0274, 0.1561, -0.0509, -0.1723, -0.2678, -0.2616, 0.0786, 0.4124], [ 0.2346, 0.4487, -0.1409, -0.0807, -0.0232, -0.4975, 0.4244, 0.8337]], [[ 0.0879, 0.1122, 0.1502, -0.3033, -0.2715, -0.1191, 0.1367, 0.5275], [ 0.2258, 0.4395, -0.1365, 0.0135, -0.0777, -0.5221, 0.4683, 0.8115], [ 0.0158, 0.3471, 0.0742, -0.0550, -0.0098, -0.5521, 0.5923,0.8782]]], grad_fn=) tensor([[[ 0.2346, 0.4487, -0.1409, -0.0807, -0.0232, -0.4975, 0.4244, 0.8337], [ 0.0158, 0.3471, 0.0742, -0.0550, -0.0098, -0.5521, 0.5923, 0.8782]]], grad_fn= ) '''
2.3 nn.LSTM
LSTM是RNN的一种模型,结构中增加了记忆单元,LSTM单元结构如下图所示:
每个单元存在输入x与上一时刻的隐层状态h和上一次记忆c,输出有y与当前时刻的隐层状态及当前时刻的记忆c。其使用上和RNN类似。
lstm = LSTM(input_dim, hidden_dim, num_layers=1, batch_first=True, bidirectional)
input_dim 输入word的特征数量,使用embeding时为嵌入的维度
hidden_dim 隐层的单元数
output, (hidden, cell) = lstm(input, (hidden, cell))
input 一批输入数据,shape为[batch, seq_len, input_dim]
hidden 当前时刻的隐层状态,shape为[num_layers * num_directions, batch, hidden_dim]
cell 当前时刻的记忆状态,shape为[num_layers * num_directions, batch, hidden_dim]
output 当前时刻的输出,shape为[batch, seq_len, num_directions*hidden_dim]
2.4 nn.GRU
GRU也是一种RNN单元,但它比LSTM简化许多,普通的GRU单元结构如下图所示:
每个单元存在输入x与上一时刻的隐层状态h,输出有y与当前时刻的隐层状态。
rnn = GRU(input_dim, hidden_dim, num_layers=1, batch_first=True, bidirectional)
input_dim 输入word的特征数量,使用embeding时为嵌入的维度
hidden_dim 隐层的单元数
output, hidden = rnn(input, hidden)
input 一批输入数据,shape为[batch, seq_len, input_dim]
hidden 上一时刻的隐层状态,shape为[num_layers*num_directions, batch, hidden_dim]
output 当前时刻的输出,shape为[batch, seq_len, num_directions*hidden_size]
2.5 损失函数
MSELoss均方误差
输入x,y可以是任意的shape,但要保持相同的shape
CrossEntropyLoss 交叉熵误差
x : 包含每个类的得分,2-D tensor, shape=(batch, n)
class: 长度为batch 的 1D tensor,每个数值为类别的索引(0到 n-1)
3 字符级RNN的分类应用
这里先介绍字符极词向量的训练与使用。语料库使用nltk的names语料库,训练根据人名预测对应的性别,names语料库有两个分类,female与male,每个分类下对应约4000个人名。这个语料库是比较适合字符级RNN的分类应用,因为人名比较短,不能再做分词以使用词向量。
首次使用nltk的names语料库要先下载下来,运行代码nltk.download('names')即可。
字符级RNN模型的词汇表很简单,就是单个字符的集合,对于英文来说,只有26个字母,外加空格等会出现在名字中间的字符,见第14行代码。出于简化的目的,所有名字统一转换为小写。
神经网络很简单,一层RNN网络,用于学习名字序列的特征。一层全连接网络,用于从将高维特征映射到性别的二分类上。这部分代码由CharRNN类实现。这里没有使用embeding层,而是使用字符的one-hot编码,当然使用Embeding也是可以的。
网络的训练和使用封装为Model类,提供三个方法。train(), evaluate(),predict()分别用于训练,评估和预测使用。具体见下面的代码及注释。
import torch from torch import nn import torch.nn.functional as F import numpy as np import sklearn import string import random nltk.download('names') from nltk.corpus import names USE_CUDA = torch.cuda.is_available() device = torch.device("cuda" if USE_CUDA else "cpu") chars = string.ascii_lowercase + '-' + ' ' + "'" ''' 将名字编码为向量:每个字符为one-hot编码,将多个字符的向量进行堆叠 abc = [ [1, 0, ...,0] [0, 1, 0, ..] [0, 0, 1, ..] ] abc.shape = (len("abc"), len(chars)) ''' def name2vec(name): ids = [chars.index(c) for c in name if c not in ["\\"]] a = np.zeros(shape=(len(ids), len(chars))) for i, idx in enumerate(ids): a[i][idx] = 1 return a def load_data(): female_file, male_file = names.fileids() f1_names = names.words(female_file) f2_names = names.words(male_file) data_set = [(name.lower(), 0) for name in f1_names] + [(name.lower(), 1) for name in f2_names] data_set = [(name2vec(name), sexy) for name, sexy in data_set] random.shuffle(data_set) return data_set class CharRNN(nn.Module): def __init__(self, vocab_size, hidden_size, output_size): super(CharRNN, self).__init__() self.vocab_size = vocab_size self.hidden_size = hidden_size self.output_size = output_size self.rnn = nn.RNN(vocab_size, hidden_size, batch_first=True) self.liner = nn.Linear(hidden_size, output_size) def forward(self, input): h0 = torch.zeros(1, 1, self.hidden_size, device=device) # 初始hidden state output, hidden = self.rnn(input, h0) output = output[:, -1, :] # 只使用最终时刻的输出作为特征 output = self.liner(output) output = F.softmax(output, dim=1) return output hidden_dim = 128 output_dim = 2 class Model: def __init__(self, epoches=100): self.model = CharRNN(len(chars), hidden_dim , output_dim) self.model.to(device) self.epoches = epoches def train(self, train_set): loss_func = nn.CrossEntropyLoss() optimizer = torch.optim.RMSprop(self.model.parameters(), lr=0.0003) for epoch in range(self.epoches): total_loss = 0 for x in range(1000):# 每轮随机样本训练1000次 name, sexy = random.choice(train_set) # RNN的input要求shape为[batch, seq_len, embed_dim],由于名字为变长,也不准备好将其填充为定长,因此batch_size取1,将取的名字放入单个元素的list中。 name_tensor = torch.tensor([name], dtype=torch.float, device=device) # torch要求计算损失时,只提供类别的索引值,不需要one-hot表示 sexy_tensor = torch.tensor([sexy], dtype=torch.long, device=device) optimizer.zero_grad() pred = self.model(name_tensor) # [batch, out_dim] loss = loss_func(pred, sexy_tensor) loss.backward() total_loss += loss optimizer.step() print("Training: in epoch {} loss {}".format(epoch, total_loss/1000)) def evaluate(self, test_set): with torch.no_grad(): # 评估时不进行梯度计算 correct = 0 for x in range(1000): # 从测试集中随机采样测试1000次 name, sexy = random.choice(test_set) name_tensor = torch.tensor([name], dtype=torch.float, device=device) pred = self.model(name_tensor) if torch.argmax(pred).item() == sexy: correct += 1 print('Evaluating: test accuracy is {}%'.format(correct/10.0)) def predict(self, name): p = name2vec(name.lower()) name_tensor = torch.tensor([p], dtype=torch.float, device=device) with torch.no_grad(): out = self.model(name_tensor) out = torch.argmax(out).item() sexy = 'female' if out == 0 else 'male' print('{} is {}'.format(name, sexy)) if __name__ == "__main__": model = Model(10) data_set = load_data() train, test = sklearn.model_selection.train_test_split(data_set) model.train(train) model.evaluate(test) model.predict("Jim") model.predict('Kate') ''' Evaluating: test accuracy is 82.6% Jim is male Kate is female '''
4 基于字符级RNN的文本生成
文本生成的思想是,通过让神经网络学习下一个输出是哪个字符来训练权重参数。这里我们仍使用names语料库,尝试训练一个生成指定性别人名的神经网络化。与分类不同的是分类只计算最终状态输出的误差而生成要计算序列每一步计算上的误差,因此训练时要逐个字符的输入到网络。由于是根据性别来生成人名,因此把性别的one-hot向量concat到输入数据里,作为训练数据的一部分。
模型由类CharRNN实现,模型的训练和使用由Model类实现,提供了train(), sample()方法,前者用于训练模型,后者用于从训练中进行采样生成。
# coding=utf-8 import torch from torch import nn import torch.nn.functional as F import numpy as np import string import random import nltk nltk.download('names') from nltk.corpus import names USE_CUDA = torch.cuda.is_available() device = torch.device("cuda" if USE_CUDA else "cpu") # 使用符号!作为名字的结束标识 chars = string.ascii_lowercase + '-' + ' ' + "'" + '!' hidden_dim = 128 output_dim = len(chars) # name abc encode as [[1, ...], [0,1,...], [0,0,1...]] def name2input(name): ids = [chars.index(c) for c in name if c not in ["\\"]] a = np.zeros(shape=(len(ids), len(chars)), dtype=np.long) for i, idx in enumerate(ids): a[i][idx] = 1 return a # name abc encode as [0 1 2] def name2target(name): ids = [chars.index(c) for c in name if c not in ["\\"]] return ids # female=[[1, 0]] male=[[0,1]] def sexy2input(sexy): a = np.zeros(shape=(1, 2), dtype=np.long) a[0][sexy] = 1 return a def load_data(): female_file, male_file = names.fileids() f1_names = names.words(female_file) f2_names = names.words(male_file) data_set = [(name.lower(), 0) for name in f1_names] + [(name.lower(), 1) for name in f2_names] random.shuffle(data_set) print(data_set[:10]) return data_set ''' [('yoshiko', 0), ('timothea', 0), ('giorgi', 1), ('thedrick', 1), ('tessie', 0), ('keith', 1), ('carena', 0), ('anthea', 0), ('cathyleen', 0), ('almeta', 0)] ''' class CharRNN(nn.Module): def __init__(self, vocab_size, hidden_size, output_size): super(CharRNN, self).__init__() self.vocab_size = vocab_size self.hidden_size = hidden_size self.output_size = output_size # 输入维度增加了性别的one-hot嵌入,dim+=2 self.rnn = nn.GRU(vocab_size+2, hidden_size, batch_first=True) self.liner = nn.Linear(hidden_size, output_size) def forward(self, sexy, name, hidden=None): if hidden is None: hidden = torch.zeros(1, 1, self.hidden_size, device=device) # 初始hidden state # 对每个输入字符,将性别向量嵌入到头部 input = torch.cat([sexy, name], dim=2) output, hidden = self.rnn(input, hidden) output = self.liner(output) output = F.dropout(output, 0.3) output = F.softmax(output, dim=2) return output.view(1, -1), hidden class Model: def __init__(self, epoches): self.model = CharRNN(len(chars), hidden_dim , output_dim) self.model.to(device) self.epoches = epoches def train(self, train_set): loss_func = nn.CrossEntropyLoss() optimizer = torch.optim.RMSprop(self.model.parameters(), lr=0.001) for epoch in range(self.epoches): total_loss = 0 for x in range(1000): # 每轮随机样本训练1000次 loss = 0 name, sexy = random.choice(train_set) optimizer.zero_grad() hidden = torch.zeros(1, 1, hidden_dim, device=device) # 对于姓名kate,将kate作为输入,ate!作为训输出,依次将每个字符输入网络,以计算误差 for x, y in zip(list(name), list(name[1:]+'!')): name_tensor = torch.tensor([name2input(x)], dtype=torch.float, device=device) sexy_tensor = torch.tensor([sexy2input(sexy)], dtype=torch.float, device=device) target_tensor = torch.tensor(name2target(y), dtype=torch.long, device=device) pred, hidden = self.model(sexy_tensor, name_tensor, hidden) loss += loss_func(pred, target_tensor) loss.backward() optimizer.step() total_loss += loss/(len(name) - 1) print("Training: in epoch {} loss {}".format(epoch, total_loss/1000)) def sample(self, sexy, start): max_len = 8 result = [] with torch.no_grad(): hidden = None for c in start: sexy_tensor = torch.tensor([sexy2input(sexy)], dtype=torch.float, device=device) name_tensor = torch.tensor([name2input(c)], dtype=torch.float, device=device) pred, hidden = self.model(sexy_tensor, name_tensor, hidden) c = start[-1] while c != '!': sexy_tensor = torch.tensor([sexy2input(sexy)], dtype=torch.float, device=device) name_tensor = torch.tensor([name2input(c)], dtype=torch.float, device=device) pred, hidden = self.model(sexy_tensor, name_tensor, hidden) topv, topi = pred.topk(1) c = chars[topi] # c = chars[torch.argmax(pred)] result.append(c) if len(result) > max_len: break return start + "".join(result[:-1]) if __name__ == "__main__": model = Model(10) data_set = load_data() model.train(data_set) print(model.sample(0, "ka")) c = input('please input name prefix: ') while c != 'q': print(model.sample(1, c)) print(model.sample(0, c)) c = input('please input name prefix: ')
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