/pytorch_neural_crf

Pytorch implementation of LSTM/BERT-CRF for named entity recognition

Primary LanguagePython

LSTM/BERT-CRF Model for Named Entity Recognition (or Sequence Labeling)

This repository implements an LSTM-CRF model for named entity recognition. The model is same as the one by Lample et al., (2016) except we do not have the last tanh layer after the BiLSTM. We achieve the SOTA performance on both CoNLL-2003 and OntoNotes 5.0 English datasets (check our benchmark with Glove and ELMo, other and benchmark results with fine-tuning BERT).

Announcements

  • We implemented a Faster CRF module which allows O(log N) inference and back-tracking!
  • Benchmark results by fine-tuning BERT/Roberta**
Model Dataset Precision Recall F1
BERT-base-cased + CRF (this repo) CONLL-2003 91.69 92.05 91.87
Roberta-base + CRF (this repo) CoNLL-2003 91.88 93.01 92.44
BERT-base-cased + CRF (this repo) OntoNotes 5 89.57 89.45 89.51
Roberta-base + CRF (this repo) OntoNotes 5 90.12 91.25 90.68

More details

Update: Our latest breaking change: using data loader to read all data and convert the data into tensor. We latest release also use HuggingFace's transformers but we didn't adopt to use the PyTorch Dataset and DataLoader yet. This version uses both and we are also testing the correctness of the code before publishing a new release.

Requirements

  • Python >= 3.6 and PyTorch >= 1.6.0 (tested)
  • Transformers package from Huggingface (Required by using Transformers)

If you use conda:

git clone https://github.com/allanj/pytorch_lstmcrf.git

# python > 3.6
conda create -n pt_lstmcrf python=3.6
conda activate pt_lstmcrf
# kindly check https://pytorch.org for the suitable version of your machines
conda install pytorch torchvision cudatoolkit=10.0 -c pytorch -n pt_lstmcrf
pip install tqdm
pip install termcolor
pip install overrides
pip install allennlp ## required when we need to get the ELMo vectors
pip install transformers

In the documentation below, we present two ways for users to run the code:

  1. Run the model via (Fine-tuning) BERT/Roberta/etc in Transformers package.
  2. Run the model with simply word embeddings (and static ELMo/BERT representations loaded from external vectors).

Our default argument setup refers to the first one 1.

Usage with Fine-Tuning BERT/Roberta (,etc) models in HuggingFace

  1. Simply replace the embedder_type argument with the model in HuggingFace. For example, if we are using bert-base-cased, we just need to change the embedder type as bert-base-cased.
    python transformers_trainer.py --device=cuda:0 --dataset=YourData --model_folder=saved_models --embedder_type=bert-base-cased
  2. (Optional) Using other models in HuggingFace.
    1. Check if your prefered language model in config/transformers_util.py. If not, add to the utils. For example, if you would like to use BERT-Large. Add the following line to the dictionary.
         'bert-large-cased' : {  "model": BertModel,  "tokenizer" : BertTokenizer }
      This name bert-large-cased has to follow the naming rule by HuggingFace.
    2. Run the main file with modified argument embedder_type:
         python trainer.py --embedder_type=bert-large-cased
      The default value for embedder_type is normal, which refers to the classic LSTM-CRF and we can use static_context_emb in previous section. Changing the name to something like bert-base-cased or roberta-base, we directly load the model from huggingface. Note: if you use other models, remember to replace the tokenization mechanism in config/utils.py.
    3. Finally, if you would like to know more about the details, read more details below:
      • Tokenization: For BERT, we use the first wordpice to represent a complete word. Check config/transformers_util.py
      • Embedder: We show how to embed the input tokens to make word representation. Check model/embedder/transformers_embedder.py
    4. Using BERT/Roberta as contextualized word embeddings (Static, Feature-based Approach) Simply go to model/transformers_embedder.py and uncomment the following:
       self.model.requires_grad = False

Other Usages

Using Word embedding or external contextualized embedding (ELMo/BERT) can be found in here.

Training with your own data.

  1. Create a folder YourData under the data directory.
  2. Put the train.txt, dev.txt and test.txt files (make sure the format is compatible, i.e. the first column is words and the last column are tags) under this directory. If you have a different format, simply modify the reader in config/reader.py.
  3. Change the dataset argument to YourData when you run trainer.py.

Further Details and Extensions

  1. Benchmark Performance
  2. Benchmark on BERT/Roberta

Ongoing Plan

  • Support for ELMo/BERT as features
  • Interactive model where we can just import model and decode a setence
  • Make the code more modularized (separate the encoder and inference layers) and readable (by adding more comments)
  • Put the benchmark performance documentation to another markdown file
  • Integrate BERT as a module instead of just features.
  • Clean up the code to better organization (e.g., import stuff)
  • Benchmark experiments for Transformers' based models.
  • Releases some pre-trained NER models.
  • Support FP-16 training/inference
  • Semi-CRF model support

Contributors

A huge thanks to @yuchenlin for his contribution in this repo.