# coding: UTF-8 import torch import torch.nn as nn import torch.nn.functional as F import numpy as np class Config(object): """配置参数""" def __init__(self, dataset, embedding): self.model_name = 'FastText' self.train_path = dataset + '/data/train.txt' # 训练集 self.dev_path = dataset + '/data/dev.txt' # 验证集 self.test_path = dataset + '/data/test.txt' # 测试集 self.predict_path = None # 预测 self.class_list = [x.strip() for x in open( dataset + '/data/class.txt', encoding='utf-8').readlines()] # 类别名单 self.vocab_path = dataset + '/data/vocab.pkl' # 词表 self.save_path = dataset + '/saved_dict/' + self.model_name + '.ckpt' # 模型训练结果 self.log_path = dataset + '/log/' + self.model_name self.embedding_pretrained = torch.tensor( np.load(dataset + '/data/' + embedding)["embeddings"].astype('float32'))\ if embedding != 'random' else None # 预训练词向量 self.device = torch.device("cuda" if torch.cuda.is_available() else 'cpu') # 设备 #self.device = torch.device('cpu') # 设备 self.weight_decay = 1e-5 # L2正则系数 self.dropout = 0.5 # 随机失活 self.require_improvement = 1000 # 若超过1000batch效果还没提升,则提前结束训练 self.num_classes = len(self.class_list) # 类别数 self.n_vocab = 0 # 词表大小,在运行时赋值 self.num_epochs = 20 # epoch数 self.batch_size = 128*10 # mini-batch大小 self.pad_size = 200 # 每句话处理成的长度(短填长切) self.learning_rate = 1e-3 # 学习率 self.embed = self.embedding_pretrained.size(1)\ if self.embedding_pretrained is not None else 300 # 字向量维度 self.hidden_size = 128 # 隐藏层大小 self.n_gram_vocab = 250499 # ngram 词表大小 self.use_ngram = True # 使用ngram def print_config(self): print(f"save_path={self.save_path}") print(f"device={self.device}") print(f"weight_decay={self.weight_decay}") print(f"dropout={self.dropout}") print(f"require_improvement={self.require_improvement}") print(f"num_classes={self.num_classes}") print(f"n_vocab={self.n_vocab}") print(f"num_epochs={self.num_epochs}") print(f"batch_size={self.batch_size}") print(f"pad_size={self.pad_size}") print(f"learning_rate={self.learning_rate}") print(f"hidden_size={self.hidden_size}") print(f"n_gram_vocab={self.n_gram_vocab}") print(f"use_ngram={self.use_ngram}") '''Bag of Tricks for Efficient Text Classification''' class Model(nn.Module): def __init__(self, config): super(Model, self).__init__() self.use_ngram = config.use_ngram if config.embedding_pretrained is not None: self.embedding = nn.Embedding.from_pretrained(config.embedding_pretrained, freeze=False) else: self.embedding = nn.Embedding(config.n_vocab, config.embed, padding_idx=config.n_vocab - 1) if config.use_ngram: self.embedding_ngram2 = nn.Embedding(config.n_gram_vocab, config.embed) self.embedding_ngram3 = nn.Embedding(config.n_gram_vocab, config.embed) self.fc1 = nn.Linear(config.embed * 3, config.hidden_size) else: self.fc1 = nn.Linear(config.embed, config.hidden_size) self.dropout = nn.Dropout(config.dropout) # self.dropout2 = nn.Dropout(config.dropout) self.fc2 = nn.Linear(config.hidden_size, config.num_classes) def forward(self, x): out_word = self.embedding(x[0]) if self.use_ngram: out_bigram = self.embedding_ngram2(x[2]) out_trigram = self.embedding_ngram3(x[3]) out = torch.cat((out_word, out_bigram, out_trigram), -1) else: out = out_word out = out.mean(dim=1) out = self.dropout(out) out = self.fc1(out) out = F.relu(out) out = self.fc2(out) return out