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load_data.py
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load_data.py
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from fastNLP.io import CSVLoader
from fastNLP import Vocabulary
from fastNLP import Const
import numpy as np
import fitlog
import pickle
import os
from fastNLP import cache_results
# from fastNLP.embeddings import StaticEmbedding
from fastNLP_module import StaticEmbedding
@cache_results(_cache_fp='cache/ontonotes4ner',_refresh=False)
def load_ontonotes4ner(path,char_embedding_path=None,bigram_embedding_path=None,index_token=True,train_clip=False,
char_min_freq=1,bigram_min_freq=1,only_train_min_freq=0):
from fastNLP.io.loader import ConllLoader
from utils import get_bigrams
train_path = os.path.join(path,'train.char.bmes{}'.format('_clip' if train_clip else ''))
dev_path = os.path.join(path,'dev.char.bmes')
test_path = os.path.join(path,'test.char.bmes')
loader = ConllLoader(['chars','target'])
train_bundle = loader.load(train_path)
dev_bundle = loader.load(dev_path)
test_bundle = loader.load(test_path)
datasets = dict()
datasets['train'] = train_bundle.datasets['train']
datasets['dev'] = dev_bundle.datasets['train']
datasets['test'] = test_bundle.datasets['train']
datasets['train'].apply_field(get_bigrams,field_name='chars',new_field_name='bigrams')
datasets['dev'].apply_field(get_bigrams, field_name='chars', new_field_name='bigrams')
datasets['test'].apply_field(get_bigrams, field_name='chars', new_field_name='bigrams')
datasets['train'].add_seq_len('chars')
datasets['dev'].add_seq_len('chars')
datasets['test'].add_seq_len('chars')
char_vocab = Vocabulary()
bigram_vocab = Vocabulary()
label_vocab = Vocabulary()
print(datasets.keys())
print(len(datasets['dev']))
print(len(datasets['test']))
print(len(datasets['train']))
char_vocab.from_dataset(datasets['train'],field_name='chars',
no_create_entry_dataset=[datasets['dev'],datasets['test']])
bigram_vocab.from_dataset(datasets['train'],field_name='bigrams',
no_create_entry_dataset=[datasets['dev'],datasets['test']])
label_vocab.from_dataset(datasets['train'],field_name='target')
if index_token:
char_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='chars',new_field_name='chars')
bigram_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='bigrams',new_field_name='bigrams')
label_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='target',new_field_name='target')
vocabs = {}
vocabs['char'] = char_vocab
vocabs['label'] = label_vocab
vocabs['bigram'] = bigram_vocab
vocabs['label'] = label_vocab
embeddings = {}
if char_embedding_path is not None:
char_embedding = StaticEmbedding(char_vocab,char_embedding_path,word_dropout=0.01,
min_freq=char_min_freq,only_train_min_freq=only_train_min_freq)
embeddings['char'] = char_embedding
if bigram_embedding_path is not None:
bigram_embedding = StaticEmbedding(bigram_vocab,bigram_embedding_path,word_dropout=0.01,
min_freq=bigram_min_freq,only_train_min_freq=only_train_min_freq)
embeddings['bigram'] = bigram_embedding
return datasets,vocabs,embeddings
@cache_results(_cache_fp='cache/resume_ner',_refresh=False)
def load_resume_ner(path,char_embedding_path=None,bigram_embedding_path=None,index_token=True,
char_min_freq=1,bigram_min_freq=1,only_train_min_freq=0):
from fastNLP.io.loader import ConllLoader
from utils import get_bigrams
train_path = os.path.join(path,'train.char.bmes')
dev_path = os.path.join(path,'dev.char.bmes')
test_path = os.path.join(path,'test.char.bmes')
loader = ConllLoader(['chars','target'])
train_bundle = loader.load(train_path)
dev_bundle = loader.load(dev_path)
test_bundle = loader.load(test_path)
datasets = dict()
datasets['train'] = train_bundle.datasets['train']
datasets['dev'] = dev_bundle.datasets['train']
datasets['test'] = test_bundle.datasets['train']
datasets['train'].apply_field(get_bigrams,field_name='chars',new_field_name='bigrams')
datasets['dev'].apply_field(get_bigrams, field_name='chars', new_field_name='bigrams')
datasets['test'].apply_field(get_bigrams, field_name='chars', new_field_name='bigrams')
datasets['train'].add_seq_len('chars')
datasets['dev'].add_seq_len('chars')
datasets['test'].add_seq_len('chars')
char_vocab = Vocabulary()
bigram_vocab = Vocabulary()
label_vocab = Vocabulary()
print(datasets.keys())
print(len(datasets['dev']))
print(len(datasets['test']))
print(len(datasets['train']))
char_vocab.from_dataset(datasets['train'],field_name='chars',
no_create_entry_dataset=[datasets['dev'],datasets['test']] )
bigram_vocab.from_dataset(datasets['train'],field_name='bigrams',
no_create_entry_dataset=[datasets['dev'],datasets['test']])
label_vocab.from_dataset(datasets['train'],field_name='target')
if index_token:
char_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='chars',new_field_name='chars')
bigram_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='bigrams',new_field_name='bigrams')
label_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='target',new_field_name='target')
vocabs = {}
vocabs['char'] = char_vocab
vocabs['label'] = label_vocab
vocabs['bigram'] = bigram_vocab
embeddings = {}
if char_embedding_path is not None:
char_embedding = StaticEmbedding(char_vocab,char_embedding_path,word_dropout=0.01,
min_freq=char_min_freq,only_train_min_freq=only_train_min_freq)
embeddings['char'] = char_embedding
if bigram_embedding_path is not None:
bigram_embedding = StaticEmbedding(bigram_vocab,bigram_embedding_path,word_dropout=0.01,
min_freq=bigram_min_freq,only_train_min_freq=only_train_min_freq)
embeddings['bigram'] = bigram_embedding
return datasets,vocabs,embeddings
@cache_results(_cache_fp='need_to_defined_fp',_refresh=False)
def equip_chinese_ner_with_skip(datasets,vocabs,embeddings,w_list,word_embedding_path=None,
word_min_freq=1,only_train_min_freq=0):
from utils_ import Trie,get_skip_path
from functools import partial
w_trie = Trie()
for w in w_list:
w_trie.insert(w)
# for k,v in datasets.items():
# v.apply_field(partial(get_skip_path,w_trie=w_trie),'chars','skips')
def skips2skips_l2r(chars,w_trie):
'''
:param lexicons: list[[int,int,str]]
:return: skips_l2r
'''
# print(lexicons)
# print('******')
lexicons = get_skip_path(chars,w_trie=w_trie)
# max_len = max(list(map(lambda x:max(x[:2]),lexicons)))+1 if len(lexicons) != 0 else 0
result = [[] for _ in range(len(chars))]
for lex in lexicons:
s = lex[0]
e = lex[1]
w = lex[2]
result[e].append([s,w])
return result
def skips2skips_r2l(chars,w_trie):
'''
:param lexicons: list[[int,int,str]]
:return: skips_l2r
'''
# print(lexicons)
# print('******')
lexicons = get_skip_path(chars,w_trie=w_trie)
# max_len = max(list(map(lambda x:max(x[:2]),lexicons)))+1 if len(lexicons) != 0 else 0
result = [[] for _ in range(len(chars))]
for lex in lexicons:
s = lex[0]
e = lex[1]
w = lex[2]
result[s].append([e,w])
return result
for k,v in datasets.items():
v.apply_field(partial(skips2skips_l2r,w_trie=w_trie),'chars','skips_l2r')
for k,v in datasets.items():
v.apply_field(partial(skips2skips_r2l,w_trie=w_trie),'chars','skips_r2l')
# print(v['skips_l2r'][0])
word_vocab = Vocabulary()
word_vocab.add_word_lst(w_list)
vocabs['word'] = word_vocab
for k,v in datasets.items():
v.apply_field(lambda x:[ list(map(lambda x:x[0],p)) for p in x],'skips_l2r','skips_l2r_source')
v.apply_field(lambda x:[ list(map(lambda x:x[1],p)) for p in x], 'skips_l2r', 'skips_l2r_word')
for k,v in datasets.items():
v.apply_field(lambda x:[ list(map(lambda x:x[0],p)) for p in x],'skips_r2l','skips_r2l_source')
v.apply_field(lambda x:[ list(map(lambda x:x[1],p)) for p in x], 'skips_r2l', 'skips_r2l_word')
for k,v in datasets.items():
v.apply_field(lambda x:list(map(len,x)), 'skips_l2r_word', 'lexicon_count')
v.apply_field(lambda x:
list(map(lambda y:
list(map(lambda z:word_vocab.to_index(z),y)),x)),
'skips_l2r_word',new_field_name='skips_l2r_word')
v.apply_field(lambda x:list(map(len,x)), 'skips_r2l_word', 'lexicon_count_back')
v.apply_field(lambda x:
list(map(lambda y:
list(map(lambda z:word_vocab.to_index(z),y)),x)),
'skips_r2l_word',new_field_name='skips_r2l_word')
if word_embedding_path is not None:
word_embedding = StaticEmbedding(word_vocab,word_embedding_path,word_dropout=0)
embeddings['word'] = word_embedding
vocabs['char'].index_dataset(datasets['train'], datasets['dev'], datasets['test'],
field_name='chars', new_field_name='chars')
vocabs['bigram'].index_dataset(datasets['train'], datasets['dev'], datasets['test'],
field_name='bigrams', new_field_name='bigrams')
vocabs['label'].index_dataset(datasets['train'], datasets['dev'], datasets['test'],
field_name='target', new_field_name='target')
return datasets,vocabs,embeddings
@cache_results(_cache_fp='cache/load_yangjie_rich_pretrain_word_list',_refresh=False)
def load_yangjie_rich_pretrain_word_list(embedding_path,drop_characters=True):
f = open(embedding_path,'r')
lines = f.readlines()
w_list = []
for line in lines:
splited = line.strip().split(' ')
w = splited[0]
w_list.append(w)
if drop_characters:
w_list = list(filter(lambda x:len(x) != 1, w_list))
return w_list
@cache_results(_cache_fp='cache/ontonotes4ner',_refresh=False)
def load_toy_ner(path,char_embedding_path=None,bigram_embedding_path=None,index_token=True,train_clip=False):
from fastNLP.io.loader import ConllLoader
from utils import get_bigrams
train_path = os.path.join(path,'toy_train.bmes')
dev_path = os.path.join(path,'toy_dev.bmes')
test_path = os.path.join(path,'toy_test.bmes')
loader = ConllLoader(['chars','target'])
train_bundle = loader.load(train_path)
dev_bundle = loader.load(dev_path)
test_bundle = loader.load(test_path)
datasets = dict()
datasets['train'] = train_bundle.datasets['train']
datasets['dev'] = dev_bundle.datasets['train']
datasets['test'] = test_bundle.datasets['train']
datasets['train'].apply_field(get_bigrams,field_name='chars',new_field_name='bigrams')
datasets['dev'].apply_field(get_bigrams, field_name='chars', new_field_name='bigrams')
datasets['test'].apply_field(get_bigrams, field_name='chars', new_field_name='bigrams')
datasets['train'].add_seq_len('chars')
datasets['dev'].add_seq_len('chars')
datasets['test'].add_seq_len('chars')
char_vocab = Vocabulary()
bigram_vocab = Vocabulary()
label_vocab = Vocabulary(padding=None,unknown=None)
print(datasets.keys())
print(len(datasets['dev']))
print(len(datasets['test']))
print(len(datasets['train']))
char_vocab.from_dataset(datasets['train'],field_name='chars',
no_create_entry_dataset=[datasets['dev'],datasets['test']] )
bigram_vocab.from_dataset(datasets['train'],field_name='bigrams',
no_create_entry_dataset=[datasets['dev'],datasets['test']])
label_vocab.from_dataset(datasets['train'],field_name='target')
if index_token:
char_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='chars',new_field_name='chars')
bigram_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='bigrams',new_field_name='bigrams')
label_vocab.index_dataset(datasets['train'],datasets['dev'],datasets['test'],
field_name='target',new_field_name='target')
vocabs = {}
vocabs['char'] = char_vocab
vocabs['label'] = label_vocab
vocabs['bigram'] = bigram_vocab
vocabs['label'] = label_vocab
embeddings = {}
if char_embedding_path is not None:
char_embedding = StaticEmbedding(char_vocab,char_embedding_path,word_dropout=0.01,)
embeddings['char'] = char_embedding
if bigram_embedding_path is not None:
bigram_embedding = StaticEmbedding(bigram_vocab,bigram_embedding_path,word_dropout=0.01)
embeddings['bigram'] = bigram_embedding
return datasets,vocabs,embeddings
@cache_results(_cache_fp='cache/msraner1',_refresh=False)
def load_msra_ner_1(path,char_embedding_path=None,bigram_embedding_path=None,index_token=True,train_clip=False,
char_min_freq=1,bigram_min_freq=1,only_train_min_freq=0):
from fastNLP.io.loader import ConllLoader
from utils import get_bigrams
if train_clip:
train_path = os.path.join(path, 'train_dev.char.bmes_clip1')
test_path = os.path.join(path, 'test.char.bmes_clip1')
else:
train_path = os.path.join(path,'train_dev.char.bmes')
test_path = os.path.join(path,'test.char.bmes')
loader = ConllLoader(['chars','target'])
train_bundle = loader.load(train_path)
test_bundle = loader.load(test_path)
datasets = dict()
datasets['train'] = train_bundle.datasets['train']
datasets['test'] = test_bundle.datasets['train']
datasets['train'].apply_field(get_bigrams,field_name='chars',new_field_name='bigrams')
datasets['test'].apply_field(get_bigrams, field_name='chars', new_field_name='bigrams')
datasets['train'].add_seq_len('chars')
datasets['test'].add_seq_len('chars')
char_vocab = Vocabulary()
bigram_vocab = Vocabulary()
label_vocab = Vocabulary()
print(datasets.keys())
# print(len(datasets['dev']))
print(len(datasets['test']))
print(len(datasets['train']))
char_vocab.from_dataset(datasets['train'],field_name='chars',
no_create_entry_dataset=[datasets['test']] )
bigram_vocab.from_dataset(datasets['train'],field_name='bigrams',
no_create_entry_dataset=[datasets['test']])
label_vocab.from_dataset(datasets['train'],field_name='target')
if index_token:
char_vocab.index_dataset(datasets['train'],datasets['test'],
field_name='chars',new_field_name='chars')
bigram_vocab.index_dataset(datasets['train'],datasets['test'],
field_name='bigrams',new_field_name='bigrams')
label_vocab.index_dataset(datasets['train'],datasets['test'],
field_name='target',new_field_name='target')
vocabs = {}
vocabs['char'] = char_vocab
vocabs['label'] = label_vocab
vocabs['bigram'] = bigram_vocab
vocabs['label'] = label_vocab
embeddings = {}
if char_embedding_path is not None:
char_embedding = StaticEmbedding(char_vocab,char_embedding_path,word_dropout=0.01,
min_freq=char_min_freq,only_train_min_freq=only_train_min_freq)
embeddings['char'] = char_embedding
if bigram_embedding_path is not None:
bigram_embedding = StaticEmbedding(bigram_vocab,bigram_embedding_path,word_dropout=0.01,
min_freq=bigram_min_freq,only_train_min_freq=only_train_min_freq)
embeddings['bigram'] = bigram_embedding
return datasets,vocabs,embeddings
@cache_results(_cache_fp='cache/weiboNER_uni+bi', _refresh=False)
def load_weibo_ner(path,unigram_embedding_path=None,bigram_embedding_path=None,index_token=True,
char_min_freq=1,bigram_min_freq=1,only_train_min_freq=0,char_word_dropout=0.01):
from fastNLP.io.loader import ConllLoader
from utils import get_bigrams
loader = ConllLoader(['chars','target'])
# bundle = loader.load(path)
#
# datasets = bundle.datasets
# print(datasets['train'][:5])
train_path = os.path.join(path,'weiboNER_2nd_conll.train_deseg')
dev_path = os.path.join(path, 'weiboNER_2nd_conll.dev_deseg')
test_path = os.path.join(path, 'weiboNER_2nd_conll.test_deseg')
paths = {}
paths['train'] = train_path
paths['dev'] = dev_path
paths['test'] = test_path
datasets = {}
for k,v in paths.items():
bundle = loader.load(v)
datasets[k] = bundle.datasets['train']
for k,v in datasets.items():
print('{}:{}'.format(k,len(v)))
# print(*list(datasets.keys()))
vocabs = {}
char_vocab = Vocabulary()
bigram_vocab = Vocabulary()
label_vocab = Vocabulary()
for k,v in datasets.items():
# ignore the word segmentation tag
v.apply_field(lambda x: [w[0] for w in x],'chars','chars')
v.apply_field(get_bigrams,'chars','bigrams')
char_vocab.from_dataset(datasets['train'],field_name='chars',no_create_entry_dataset=[datasets['dev'],datasets['test']])
label_vocab.from_dataset(datasets['train'],field_name='target')
print('label_vocab:{}\n{}'.format(len(label_vocab),label_vocab.idx2word))
for k,v in datasets.items():
# v.set_pad_val('target',-100)
v.add_seq_len('chars',new_field_name='seq_len')
vocabs['char'] = char_vocab
vocabs['label'] = label_vocab
bigram_vocab.from_dataset(datasets['train'],field_name='bigrams',no_create_entry_dataset=[datasets['dev'],datasets['test']])
if index_token:
char_vocab.index_dataset(*list(datasets.values()), field_name='chars', new_field_name='chars')
bigram_vocab.index_dataset(*list(datasets.values()),field_name='bigrams',new_field_name='bigrams')
label_vocab.index_dataset(*list(datasets.values()), field_name='target', new_field_name='target')
# for k,v in datasets.items():
# v.set_input('chars','bigrams','seq_len','target')
# v.set_target('target','seq_len')
vocabs['bigram'] = bigram_vocab
embeddings = {}
if unigram_embedding_path is not None:
unigram_embedding = StaticEmbedding(char_vocab, model_dir_or_name=unigram_embedding_path,
word_dropout=char_word_dropout,
min_freq=char_min_freq,only_train_min_freq=only_train_min_freq,)
embeddings['char'] = unigram_embedding
if bigram_embedding_path is not None:
bigram_embedding = StaticEmbedding(bigram_vocab, model_dir_or_name=bigram_embedding_path,
word_dropout=0.01,
min_freq=bigram_min_freq,only_train_min_freq=only_train_min_freq)
embeddings['bigram'] = bigram_embedding
return datasets, vocabs, embeddings
if __name__ == '__main__':
pass