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第N6周:使用Word2vec实现文本分类

南柯Taylor 04-01 14:30 阅读 1
import torch
import torch.nn as nn
import torchvision
from torchvision import transforms,datasets
import os,PIL,pathlib,warnings
#忽略警告信息
warnings.filterwarnings("ignore")
# win10系统
device = torch.device("cuda"if torch.cuda.is_available()else"cpu")
device

import pandas as pd
# 加载自定义中文数据
train_data= pd.read_csv('./data/train2.csv',sep='\t',header=None)
train_data.head()

# 构造数据集迭代器
def coustom_data_iter(texts,labels):
    for x,y in zip(texts,labels):
        yield x,y
x = train_data[0].values[:]
#多类标签的one-hot展开
y = train_data[1].values[:]


from gensim.models.word2vec import Word2Vec
import numpy as np
#训练word2Vec浅层神经网络模型
w2v=Word2Vec(vector_size=100#是指特征向量的维度,默认为100。
              ,min_count=3)#可以对字典做截断。词频少于min_count次数的单词会被丢弃掉,默认为5

w2v.build_vocab(x)
w2v.train(x,total_examples=w2v.corpus_count,epochs=20)


# 将文本转化为向量
def average_vec(text):
    vec =np.zeros(100).reshape((1,100))
    for word in text:
        try:
            vec +=w2v.wv[word].reshape((1,100))
        except KeyError:
                continue
    return vec
#将词向量保存为Ndarray
x_vec= np.concatenate([average_vec(z)for z in x])
#保存Word2Vec模型及词向量
w2v.save('data/w2v_model.pk1')


train_iter= coustom_data_iter(x_vec,y)
len(x),len(x_vec)

label_name =list(set(train_data[1].values[:]))
print(label_name)


text_pipeline =lambda x:average_vec(x)
label_pipeline =lambda x:label_name.index(x)

text_pipeline("你在干嘛")
label_pipeline("Travel-Query")


from torch.utils.data import DataLoader
def collate_batch(batch):
    label_list,text_list=[],[]
    for(_text,_label)in batch:
        # 标签列表
        label_list.append(label_pipeline(_label))
        # 文本列表
        processed_text = torch.tensor(text_pipeline(_text),dtype=torch.float32)
        text_list.append(processed_text)
        label_list = torch.tensor(label_list,dtype=torch.int64)
        text_list = torch.cat(text_list)
    return text_list.to(device),label_list.to(device)
# 数据加载器,调用示例
dataloader = DataLoader(train_iter,batch_size=8,
shuffle =False,
collate_fn=collate_batch)



from torch import nn
class TextclassificationModel(nn.Module):

    def __init__(self,num_class):
        super(TextclassificationModel,self).__init__()
        self.fc = nn.Linear(100,num_class)
    def forward(self,text):
        return self.fc(text)


num_class =len(label_name)
vocab_size =100000
em_size=12
model= TextclassificationModel(num_class).to(device)




import time
def train(dataloader):
    model.train()#切换为训练模式
    total_acc,train_loss,total_count =0,0,0
    log_interval=50
    start_time= time.time()

    for idx,(text,label)in enumerate(dataloader):
        predicted_label= model(text)
        # grad属性归零
        optimizer.zero_grad()
        loss=criterion(predicted_label,label)#计算网络输出和真实值之间的差距,label
        loss.backward()
        #反向传播
        torch.nn.utils.clip_grad_norm(model.parameters(),0.1)#梯度裁剪
        optimizer.step()#每一步自动更新
        #记录acc与loss
        total_acc+=(predicted_label.argmax(1)==label).sum().item()
        train_loss += loss.item()
        total_count += label.size(0)
        if idx % log_interval==0 and idx>0:
            elapsed =time.time()-start_time
            print('Iepoch {:1d}I{:4d}/{:4d} batches'
            '|train_acc {:4.3f} train_loss {:4.5f}'.format(epoch,idx,len(dataloader),total_acc/total_count,train_loss/total_count))
            total_acc,train_loss,total_count =0,0,0

            start_time = time.time()
def evaluate(dataloader):
    model.eval()#切换为测试模式
    total_acc,train_loss,total_count =0,0,0
    with torch.no_grad():
        for idx,(text,label)in enumerate(dataloader):
            predicted_label= model(text)
            loss = criterion(predicted_label,label)# 计算loss值
            # 记录测试数据
            total_acc+=(predicted_label.argmax(1)== label).sum().item()
            train_loss += loss.item()
            total_count += label.size(0)
    return total_acc/total_count,train_loss/total_count




from torch.utils.data.dataset import random_split
from torchtext.data.functional import to_map_style_dataset
# 超参数
EPOCHS=10#epoch
LR=5 #学习率
BATCH_SIZE=64 # batch size for training
criterion = torch.nn.CrossEntropyLoss()
optimizer= torch.optim.SGD(model.parameters(),lr=LR)
scheduler=torch.optim.lr_scheduler.StepLR(optimizer,1.0,gamma=0.1)
total_accu = None
# 构建数据集
train_iter= coustom_data_iter(train_data[0].values[:],train_data[1].values[:])
train_dataset = to_map_style_dataset(train_iter)

split_train_,split_valid_= random_split(train_dataset,[int(len(train_dataset)*0.8),int(len(train_dataset)*0.2)])
train_dataloader =DataLoader(split_train_,batch_size=BATCH_SIZE,
shuffle=True,collate_fn=collate_batch)
valid_dataloader = DataLoader(split_valid_,batch_size=BATCH_SIZE,
shuffle=True,collate_fn=collate_batch)
for epoch in range(1,EPOCHS+1):
    epoch_start_time = time.time()
    train(train_dataloader)
    val_acc,val_loss = evaluate(valid_dataloader)
    # 获取当前的学习率
    lr =optimizer.state_dict()['param_groups'][0]['1r']
    if total_accu is not None and total_accu>val_acc:
      scheduler.step()
    else:
     total_accu = val_acc
    print('-'*69)
    print('|epoch {:1d}|time:{:4.2f}s |'
    'valid_acc {:4.3f} valid_loss {:4.3f}I1r {:4.6f}'.format(epoch,
    time.time()-epoch_start_time,
    val_acc,val_loss,lr))

    print('-'*69)


# test_acc,test_loss =evaluate(valid_dataloader)
# print('模型准确率为:{:5.4f}'.format(test_acc))
#
#
# def predict(text,text_pipeline):
#     with torch.no_grad():
#         text = torch.tensor(text_pipeline(text),dtype=torch.float32)
#         print(text.shape)
#         output = model(text)
#         return output.argmax(1).item()
# # ex_text_str="随便播放一首专辑阁楼里的佛里的歌"
# ex_text_str="还有双鸭山到淮阴的汽车票吗13号的"
# model=model.to("cpu")
# print("该文本的类别是:%s"%label_name[predict(ex_text_str,text_pipeline)])

以上是文本识别基本代码

输出:

[[-0.85472693  0.96605204  1.5058695  -0.06065784 -2.10079319 -0.12021151
   1.41170089  2.00004494  0.90861696 -0.62710127 -0.62408304 -3.80595499
   1.02797993 -0.45584389  0.54715634  1.70490362  2.33389823 -1.99607518
   4.34822938 -0.76296186  2.73265275 -1.15046433  0.82106878 -0.32701646
  -0.50515595 -0.37742117 -2.02331601 -1.365334    1.48786476 -1.6394971
   1.59438308  2.23569647 -0.00500725 -0.65070192  0.07377997  0.01777986
  -1.35580809  3.82080549 -2.19764423  1.06595343  0.99296588  0.58972518
  -0.33535255  2.15471306 -0.52244038  1.00874437  1.28869729 -0.72208139
  -2.81094289  2.2614549   0.20799019 -2.36187895 -0.94019454  0.49448857
  -0.68613767 -0.79071895  0.47535057 -0.78339124 -0.71336574 -0.27931567
   1.0514895  -1.76352624  1.93158554 -0.85853558 -0.65540617  1.3612217
  -1.39405773  1.18187538  1.31730198 -0.02322496  0.14652854  0.22249881
   2.01789951 -0.40144247 -0.39880068 -0.16220299 -2.85221207 -0.27722868
   2.48236791 -0.51239379 -1.47679498 -0.28452797 -2.64497767  2.12093259
  -1.2326943  -1.89571355  2.3295732  -0.53244872 -0.67313893 -0.80814604
   0.86987564 -1.31373079  1.33797717  1.02223087  0.5817025  -0.83535647
   0.97088164  2.09045361 -2.57758138  0.07126901]]
6

输出结果并非为0

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