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Named Entity Recognition as Dependency Parsing

Introduction

This repository contains code introduced in the following paper:

Named Entity Recognition as Dependency Parsing
Juntao Yu, Bernd Bohnet and Massimo Poesio
In Proceedings of the 58th Annual Conference of the Association for Computational Linguistics (ACL), 2020

Setup Environments

  • The code is written in Python 2 and Tensorflow 1.0, A Python3 and Tensorflow 2.0 version is provided by Amir (see Other Versions).
  • Before starting, you need to install all the required packages listed in the requirment.txt using pip install -r requirements.txt.
  • Then download the BERT models, for English we used the original cased BERT-Large model and for other languages we used the cased BERT-Base multilingual model.
  • After that modify and run extract_bert_features/extract_bert_features.sh to compute the BERT embeddings for your training or testing.
  • You also need to download context-independent word embeddings such as fasttext or GloVe embeddings that required by the system.

To use a pre-trained model

  • Pre-trained models can be download from this link. We provide all nine pre-trained models reported in our paper.

  • Choose the model you want to use and copy them to the logs/ folder.

  • Modifiy the test_path accordingly in the experiments.conf:

    • the test_path is the path to .jsonlines file, each line of the .jsonlines file is a batch of sentences and must in the following format:
    {"doc_key": "batch_01", 
    "ners": [[[0, 0, "PER"], [3, 3, "GPE"], [5, 5, "GPE"]], 
    [[3, 3, "PER"], [10, 14, "ORG"], [20, 20, "GPE"], [20, 25, "GPE"], [22, 22, "GPE"]], 
    []], 
    "sentences": [["Anwar", "arrived", "in", "Shanghai", "from", "Nanjing", "yesterday", "afternoon", "."], 
    ["This", "morning", ",", "Anwar", "attended", "the", "foundation", "laying", "ceremony", "of", "the", "Minhang", "China-Malaysia", "joint-venture", "enterprise", ",", "and", "after", "that", "toured", "Pudong", "'s", "Jingqiao", "export", "processing", "district", "."], 
    ["(", "End", ")"]]}
    
    • Each of the sentences in the batch corresponds to a list of NEs stored under ners key, if some sentences do not contain NEs use an empty list [] instead.
  • Then use python evaluate.py config_name to start your evaluation

To train your own model

  • You will need additionally to create the character vocabulary by using python get_char_vocab.py train.jsonlines dev.jsonlines
  • Then you can start training by using python train.py config_name

Other Versions

  • Amir Zeldes kindly created a tensorflow 2.0 and python 3 ready version and can be find here