Skip to content

Navigation Menu

Sign in
Appearance settings

Search code, repositories, users, issues, pull requests...

Provide feedback

We read every piece of feedback, and take your input very seriously.

Saved searches

Use saved searches to filter your results more quickly

Sign up
Appearance settings

lonePatient/BERT-NER-Pytorch

Repository files navigation

Chinese NER using Bert

BERT for Chinese NER.

update:其他一些可以参考,包括Biaffine、GlobalPointer等:examples

dataset list

  1. cner: datasets/cner
  2. CLUENER: https://github.com/CLUEbenchmark/CLUENER

model list

  1. BERT+Softmax
  2. BERT+CRF
  3. BERT+Span

requirement

  1. 1.1.0 =< PyTorch < 1.5.0
  2. cuda=9.0
  3. python3.6+

input format

Input format (prefer BIOS tag scheme), with each character its label for one line. Sentences are splited with a null line.

美	B-LOC
国	I-LOC
的	O
华	B-PER
莱	I-PER
士	I-PER
我	O
跟	O
他	O

run the code

  1. Modify the configuration information in run_ner_xxx.py or run_ner_xxx.sh .
  2. sh scripts/run_ner_xxx.sh

note: file structure of the model

├── prev_trained_model
| └── bert_base
| | └── pytorch_model.bin
| | └── config.json
| | └── vocab.txt
| | └── ......

CLUENER result

The overall performance of BERT on dev:

Accuracy (entity) Recall (entity) F1 score (entity)
BERT+Softmax 0.7897 0.8031 0.7963
BERT+CRF 0.7977 0.8177 0.8076
BERT+Span 0.8132 0.8092 0.8112
BERT+Span+adv 0.8267 0.8073 0.8169
BERT-small(6 layers)+Span+kd 0.8241 0.7839 0.8051
BERT+Span+focal_loss 0.8121 0.8008 0.8064
BERT+Span+label_smoothing 0.8235 0.7946 0.8088

ALBERT for CLUENER

The overall performance of ALBERT on dev:

model version Accuracy(entity) Recall(entity) F1(entity) Train time/epoch
albert base_google 0.8014 0.6908 0.7420 0.75x
albert large_google 0.8024 0.7520 0.7763 2.1x
albert xlarge_google 0.8286 0.7773 0.8021 6.7x
bert google 0.8118 0.8031 0.8074 -----
albert base_bright 0.8068 0.7529 0.7789 0.75x
albert large_bright 0.8152 0.7480 0.7802 2.2x
albert xlarge_bright 0.8222 0.7692 0.7948 7.3x

Cner result

The overall performance of BERT on dev(test):

Accuracy (entity) Recall (entity) F1 score (entity)
BERT+Softmax 0.9586(0.9566) 0.9644(0.9613) 0.9615(0.9590)
BERT+CRF 0.9562(0.9539) 0.9671(0.9644) 0.9616(0.9591)
BERT+Span 0.9604(0.9620) 0.9617(0.9632) 0.9611(0.9626)
BERT+Span+focal_loss 0.9516(0.9569) 0.9644(0.9681) 0.9580(0.9625)
BERT+Span+label_smoothing 0.9566(0.9568) 0.9624(0.9656) 0.9595(0.9612)

About

Chinese NER(Named Entity Recognition) using BERT(Softmax, CRF, Span)

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

AltStyle によって変換されたページ (->オリジナル) /