import codecs
import os
import keras
import numpy as np
import pandas as pd
from keras.callbacks import ModelCheckpoint, EarlyStopping
from keras.optimizers import Adam
from keras_bert import load_trained_model_from_checkpoint, Tokenizer
from keras_radam import RAdam
max_len = 96
config_path = 'roberta/bert_config_large.json'
checkpoint_path = 'roberta/roberta_zh_large_model.ckpt'
dict_path = 'roberta/vocab.txt'
token_dict = {}
with codecs.open(dict_path, 'r', 'utf8') as reader:
for line in reader:
token = line.strip()
token_dict[token] = len(token_dict)
class OurTokenizer(Tokenizer):
def _tokenize(self, text):
R = []
for c in text:
if c in self._token_dict:
R.append(c)
elif self._is_space(c):
R.append('[unused1]') # space类用未经训练的[unused1]表示
else:
R.append('[UNK]') # 剩余的字符是[UNK]
return R
tokenizer = OurTokenizer(token_dict)
neg = pd.read_csv('data/enhance_data_result.csv', header=None)
data = []
for d, label in zip(neg[1], neg[2]):
if label in [2, 0, 1]:
if isinstance(d, str):
data.append((d, label))
# 按照9:1的比例划分训练集和验证集
random_order = list(range(len(data)))
np.random.shuffle(random_order)
train_data = [data[j] for i, j in enumerate(random_order) if i % 10 != 0]
valid_data = [data[j] for i, j in enumerate(random_order) if i % 10 == 0]
def seq_padding(X, padding=0):
L = [len(x) for x in X]
ML = max(L)
return np.array([
np.concatenate([x, [padding] * (ML - len(x))]) if len(x) < ML else x for x in X
])
class data_generator:
def __init__(self, data, batch_size=2):
self.data = data
self.batch_size = batch_size
self.steps = len(self.data) // self.batch_size
if len(self.data) % self.batch_size != 0:
self.steps += 1
def __len__(self):
return self.steps
def __iter__(self):
while True:
idxs = list(range(len(self.data)))
np.random.shuffle(idxs)
X1, X2, Y = [], [], []
for i in idxs:
d = self.data[i]
text = d[0][:max_len]
x1, x2 = tokenizer.encode(first=text)
y = d[1]
X1.append(x1)
X2.append(x2)
Y.append([y])
if len(X1) == self.batch_size or i == idxs[-1]:
X1 = seq_padding(X1)
X2 = seq_padding(X2)
Y = seq_padding(Y)
yield [X1, X2], Y
[X1, X2, Y] = [], [], []
from keras.layers import *
from keras.models import Model
bert_model = load_trained_model_from_checkpoint(config_path, checkpoint_path, seq_len=None)
for l in bert_model.layers:
l.trainable = True
x1_in = Input(shape=(None,))
x2_in = Input(shape=(None,))
x = bert_model([x1_in, x2_in])
x = Lambda(lambda x: x[:, 0])(x)
x = Dropout(0.8)(x)
p = Dense(3, activation='softmax')(x)
model = Model([x1_in, x2_in], p)
save = ModelCheckpoint(
os.path.join('bert.h5'),
monitor='val_acc',
verbose=1,
save_best_only=True,
mode='auto'
)
early_stopping = EarlyStopping(
monitor='val_acc',
min_delta=0,
patience=8,
verbose=1,
mode='auto'
)
callbacks = [save, early_stopping]
model.compile(
loss='sparse_categorical_crossentropy',
optimizer=Adam(1e-5), # 用足够小的学习率
metrics=['accuracy']
)
model.summary()
train_D = data_generator(train_data)
valid_D = data_generator(valid_data)
model.fit_generator(
train_D.__iter__(),
steps_per_epoch=1000,
epochs=5000,
validation_data=valid_D.__iter__(),
validation_steps=1000,
callbacks=callbacks,
)
原创声明:本文系作者授权腾讯云开发者社区发表,未经许可,不得转载。
如有侵权,请联系 cloudcommunity@tencent.com 删除。
原创声明:本文系作者授权腾讯云开发者社区发表,未经许可,不得转载。
如有侵权,请联系 cloudcommunity@tencent.com 删除。
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