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ner.py
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ner.py
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import os
os.environ['TF_KERAS'] = '1'
import sys
import numpy as np
import conlleval
import tensorflow as tf
from tensorflow import keras
from tensorflow.keras.utils import multi_gpu_model
from common import encode, label_encode, write_result
from common import load_pretrained
from common import create_ner_model, create_optimizer, argument_parser
from common import read_conll, process_sentences, get_labels
from common import save_ner_model
from common import load_ner_model
from common import get_predictions, combine_sentences2
from common import Sentences
from common import tokenize_and_split_sentences, split_to_documents, get_predictions2, process_docs, process_no_context
def main(argv):
argparser = argument_parser()
args = argparser.parse_args(argv[1:])
seq_len = args.max_seq_length # abbreviation
pretrained_model, tokenizer = load_pretrained(args)
train_words, train_tags = read_conll(args.train_data)
test_words, test_tags = read_conll(args.test_data)
print(args.no_context)
if args.no_context:
train_data = process_no_context(train_words, train_tags, tokenizer, seq_len)
test_data = process_no_context(test_words, test_tags, tokenizer, seq_len)
elif args.documentwise:
tr_docs, tr_doc_tags, tr_line_ids = split_to_documents(train_words, train_tags)
te_docs, te_doc_tags, te_line_ids = split_to_documents(test_words, test_tags)
train_data = process_docs(tr_docs, tr_doc_tags, tr_line_ids, tokenizer, seq_len)
test_data = process_docs(te_docs, te_doc_tags, te_line_ids, tokenizer, seq_len)
else:
train_data = process_sentences(train_words, train_tags, tokenizer, seq_len, args.predict_position)
test_data = process_sentences(test_words, test_tags, tokenizer, seq_len, args.predict_position)
label_list = get_labels(train_data.labels)
tag_map = { l: i for i, l in enumerate(label_list) }
inv_tag_map = { v: k for k, v in tag_map.items() }
train_x = encode(train_data.combined_tokens, tokenizer, seq_len)
test_x = encode(test_data.combined_tokens, tokenizer, seq_len)
train_y, train_weights = label_encode(train_data.combined_labels, tag_map, seq_len)
test_y, test_weights = label_encode(test_data.combined_labels, tag_map, seq_len)
if args.use_ner_model and (args.ner_model_dir is not None):
ner_model, tokenizer, labels, config = load_ner_model(args.ner_model_dir)
else:
optimizer = create_optimizer(len(train_x[0]), args)
model = create_ner_model(pretrained_model, len(tag_map))
if args.num_gpus > 1:
ner_model = multi_gpu_model(model, args.num_gpus)
else:
ner_model = model
ner_model.compile(
optimizer,
loss='sparse_categorical_crossentropy',
sample_weight_mode='temporal',
metrics=['sparse_categorical_accuracy']
)
ner_model.fit(
train_x,
train_y,
sample_weight=train_weights,
epochs=args.num_train_epochs,
batch_size=args.batch_size
)
if args.ner_model_dir is not None:
label_list = [v for k, v in sorted(list(inv_tag_map.items()))]
save_ner_model(ner_model, tokenizer, label_list, args)
probs = ner_model.predict(test_x, batch_size=args.batch_size)
preds = np.argmax(probs, axis=-1)
results = []
m_names = []
if args.no_context:
pr_ensemble, pr_test_first = get_predictions(preds, test_data.tokens, test_data.sentence_numbers)
output_file = "output/{}-NC.tsv".format(args.output_file)
m_names.append('NC')
ensemble = []
for i,pred in enumerate(pr_test_first):
ensemble.append([inv_tag_map[t] for t in pred])
lines_ensemble, sentences_ensemble = write_result(
output_file, test_data.words, test_data.lengths,
test_data.tokens, test_data.labels, ensemble
)
c = conlleval.evaluate(lines_ensemble)
conlleval.report(c)
results.append([conlleval.metrics(c)[0].prec, conlleval.metrics(c)[0].rec, conlleval.metrics(c)[0].fscore])
else:
# First tag then vote
pr_ensemble, pr_test_first = get_predictions(preds, test_data.tokens, test_data.sentence_numbers)
# Accumulate probabilities, then vote
prob_ensemble, prob_test_first = get_predictions2(probs, test_data.tokens, test_data.sentence_numbers)
ens = [pr_ensemble, prob_ensemble, pr_test_first, prob_test_first]
if args.documentwise:
# D-CMV: Documentwise CMV
# D-CMVP: Documetwise CMV, probs summed, argmax after that
# D-F: Documentwise First
# D-FP: Same as D-FP
method_names = ['D-CMV','D-CMVP','D-F','D-FP']
else:
method_names = ['CMV','CMVP','F','FP']
for i, ensem in enumerate(ens):
ensemble = []
for j,pred in enumerate(ensem):
ensemble.append([inv_tag_map[t] for t in pred])
output_file = "output/{}-{}.tsv".format(args.output_file, method_names[i])
lines_ensemble, sentences_ensemble = write_result(
output_file, test_data.words, test_data.lengths,
test_data.tokens, test_data.labels, ensemble)
print("Model trained: ", args.ner_model_dir)
print("Seq-len: ", args.max_seq_length)
print("Learning rate: ", args.learning_rate)
print("Batch Size: ", args.batch_size)
print("Epochs: ", args.num_train_epochs)
print("Training data: ", args.train_data)
print("Testing data: ", args.test_data)
print("")
print("Results with {}".format(method_names[i]))
c = conlleval.evaluate(lines_ensemble)
print("")
conlleval.report(c)
results.append([conlleval.metrics(c)[0].prec, conlleval.metrics(c)[0].rec, conlleval.metrics(c)[0].fscore])
m_names.extend(method_names)
if args.sentence_in_context:
starting_pos = np.arange(0,seq_len+1,32)
starting_pos[0] = 1
m_names.extend(starting_pos)
for start_p in starting_pos:
tt_lines, tt_tags, line_nos, line_starts = combine_sentences2(test_data.tokens, test_data.labels, seq_len-1, start_p-1)
tt_x = encode(tt_lines, tokenizer, seq_len)
tt_y, train_weights = label_encode(tt_tags, tag_map, seq_len)
probs = ner_model.predict(tt_x, batch_size=args.batch_size)
preds = np.argmax(probs, axis=-1)
pred_tags = []
for i, pred in enumerate(preds):
idx = line_nos[i].index(i)
pred_tags.append([inv_tag_map[t] for t in pred[line_starts[i][idx]+1:line_starts[i][idx]+len(test_data.tokens[i])+1]])
output_file = "output/{}-{}.tsv".format(args.output_file, start_p)
lines_first, sentences_first = write_result(
output_file, test_data.words, test_data.lengths,
test_data.tokens, test_data.labels, pred_tags
)
print("")
print("Results with prediction starting position ", start_p)
c = conlleval.evaluate(lines_first)
conlleval.report(c)
results.append([conlleval.metrics(c)[0].prec, conlleval.metrics(c)[0].rec, conlleval.metrics(c)[0].fscore])
result_file = "./results/results-{}.csv".format(args.output_file)
with open(result_file, 'w+') as f:
for i, line in enumerate(results):
params = "{},{},{},{},{},{},{},{},{}".format(args.output_file,
args.max_seq_length,
args.bert_config_file,
args.num_train_epochs,
args.learning_rate,
args.batch_size,
args.predict_position,
args.train_data,
args.test_data)
f.write(params)
f.write(",{}".format(m_names[i]))
for item in line:
f.write(",{}".format(item))
f.write('\n')
for i in results:
print(i)
return 0
if __name__ == '__main__':
sys.exit(main(sys.argv))