LUKE -- Language Understanding with Knowledge-based Embeddings

Related tags

Text Data & NLPluke
Overview

LUKE

CircleCI


LUKE (Language Understanding with Knowledge-based Embeddings) is a new pre-trained contextualized representation of words and entities based on transformer. It was proposed in our paper LUKE: Deep Contextualized Entity Representations with Entity-aware Self-attention. It achieves state-of-the-art results on important NLP benchmarks including SQuAD v1.1 (extractive question answering), CoNLL-2003 (named entity recognition), ReCoRD (cloze-style question answering), TACRED (relation classification), and Open Entity (entity typing).

This repository contains the source code to pre-train the model and fine-tune it to solve downstream tasks.

News

November 24, 2021: Entity disambiguation example is available

The example code of entity disambiguation based on LUKE has been added to this repository. This model was originally proposed in our paper, and achieved state-of-the-art results on five standard entity disambiguation datasets: AIDA-CoNLL, MSNBC, AQUAINT, ACE2004, and WNED-WIKI.

For further details, please refer to the example directory.

August 3, 2021: New example code based on Hugging Face Transformers and AllenNLP is available

New fine-tuning examples of three downstream tasks, i.e., NER, relation classification, and entity typing, have been added to LUKE. These examples are developed based on Hugging Face Transformers and AllenNLP. The fine-tuning models are defined using simple AllenNLP's Jsonnet config files!

The example code is available in the examples_allennlp directory.

May 5, 2021: LUKE is added to Hugging Face Transformers

LUKE has been added to the master branch of the Hugging Face Transformers library. You can now solve entity-related tasks (e.g., named entity recognition, relation classification, entity typing) easily using this library.

For example, the LUKE-large model fine-tuned on the TACRED dataset can be used as follows:

>>> from transformers import LukeTokenizer, LukeForEntityPairClassification
>>> model = LukeForEntityPairClassification.from_pretrained("studio-ousia/luke-large-finetuned-tacred")
>>> tokenizer = LukeTokenizer.from_pretrained("studio-ousia/luke-large-finetuned-tacred")
>>> text = "Beyoncé lives in Los Angeles."
>>> entity_spans = [(0, 7), (17, 28)]  # character-based entity spans corresponding to "Beyoncé" and "Los Angeles"
>>> inputs = tokenizer(text, entity_spans=entity_spans, return_tensors="pt")
>>> outputs = model(**inputs)
>>> logits = outputs.logits
>>> predicted_class_idx = int(logits[0].argmax())
>>> print("Predicted class:", model.config.id2label[predicted_class_idx])
Predicted class: per:cities_of_residence

We also provide the following three Colab notebooks that show how to reproduce our experimental results on CoNLL-2003, TACRED, and Open Entity datasets using the library:

Please refer to the official documentation for further details.

November 5, 2021: LUKE-500K (base) model

We released LUKE-500K (base), a new pretrained LUKE model which is smaller than existing LUKE-500K (large). The experimental results of the LUKE-500K (base) and LUKE-500K (large) on SQuAD v1 and CoNLL-2003 are shown as follows:

Task Dataset Metric LUKE-500K (base) LUKE-500K (large)
Extractive Question Answering SQuAD v1.1 EM/F1 86.1/92.3 90.2/95.4
Named Entity Recognition CoNLL-2003 F1 93.3 94.3

We tuned only the batch size and learning rate in the experiments based on LUKE-500K (base).

Comparison with State-of-the-Art

LUKE outperforms the previous state-of-the-art methods on five important NLP tasks:

Task Dataset Metric LUKE-500K (large) Previous SOTA
Extractive Question Answering SQuAD v1.1 EM/F1 90.2/95.4 89.9/95.1 (Yang et al., 2019)
Named Entity Recognition CoNLL-2003 F1 94.3 93.5 (Baevski et al., 2019)
Cloze-style Question Answering ReCoRD EM/F1 90.6/91.2 83.1/83.7 (Li et al., 2019)
Relation Classification TACRED F1 72.7 72.0 (Wang et al. , 2020)
Fine-grained Entity Typing Open Entity F1 78.2 77.6 (Wang et al. , 2020)

These numbers are reported in our EMNLP 2020 paper.

Installation

LUKE can be installed using Poetry:

$ poetry install

The virtual environment automatically created by Poetry can be activated by poetry shell.

Released Models

We initially release the pre-trained model with 500K entity vocabulary based on the roberta.large model.

Name Base Model Entity Vocab Size Params Download
LUKE-500K (base) roberta.base 500K 253 M Link
LUKE-500K (large) roberta.large 500K 483 M Link

Reproducing Experimental Results

The experiments were conducted using Python3.6 and PyTorch 1.2.0 installed on a server with a single or eight NVidia V100 GPUs. We used NVidia's PyTorch Docker container 19.02. For computational efficiency, we used mixed precision training based on APEX library which can be installed as follows:

$ git clone https://github.com/NVIDIA/apex.git
$ cd apex
$ git checkout c3fad1ad120b23055f6630da0b029c8b626db78f
$ pip install -v --no-cache-dir --global-option="--cpp_ext" --global-option="--cuda_ext" .

The APEX library is not needed if you do not use --fp16 option or reproduce the results based on the trained checkpoint files.

The commands that reproduce the experimental results are provided as follows:

Entity Typing on Open Entity Dataset

Dataset: Link
Checkpoint file (compressed): Link

Using the checkpoint file:

$ python -m examples.cli \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    entity-typing run \
    --data-dir=<DATA_DIR> \
    --checkpoint-file=<CHECKPOINT_FILE> \
    --no-train

Fine-tuning the model:

$ python -m examples.cli \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    entity-typing run \
    --data-dir=<DATA_DIR> \
    --train-batch-size=2 \
    --gradient-accumulation-steps=2 \
    --learning-rate=1e-5 \
    --num-train-epochs=3 \
    --fp16

Relation Classification on TACRED Dataset

Dataset: Link
Checkpoint file (compressed): Link

Using the checkpoint file:

$ python -m examples.cli \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    relation-classification run \
    --data-dir=<DATA_DIR> \
    --checkpoint-file=<CHECKPOINT_FILE> \
    --no-train

Fine-tuning the model:

$ python -m examples.cli \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    relation-classification run \
    --data-dir=<DATA_DIR> \
    --train-batch-size=4 \
    --gradient-accumulation-steps=8 \
    --learning-rate=1e-5 \
    --num-train-epochs=5 \
    --fp16

Named Entity Recognition on CoNLL-2003 Dataset

Dataset: Link
Checkpoint file (compressed): Link

Using the checkpoint file:

$ python -m examples.cli \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    ner run \
    --data-dir=<DATA_DIR> \
    --checkpoint-file=<CHECKPOINT_FILE> \
    --no-train

Fine-tuning the model:

$ python -m examples.cli\
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    ner run \
    --data-dir=<DATA_DIR> \
    --train-batch-size=2 \
    --gradient-accumulation-steps=4 \
    --learning-rate=1e-5 \
    --num-train-epochs=5 \
    --fp16

Cloze-style Question Answering on ReCoRD Dataset

Dataset: Link
Checkpoint file (compressed): Link

Using the checkpoint file:

$ python -m examples.cli \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    entity-span-qa run \
    --data-dir=<DATA_DIR> \
    --checkpoint-file=<CHECKPOINT_FILE> \
    --no-train

Fine-tuning the model:

$ python -m examples.cli \
    --num-gpus=8 \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    entity-span-qa run \
    --data-dir=<DATA_DIR> \
    --train-batch-size=1 \
    --gradient-accumulation-steps=4 \
    --learning-rate=1e-5 \
    --num-train-epochs=2 \
    --fp16

Extractive Question Answering on SQuAD 1.1 Dataset

Dataset: Link
Checkpoint file (compressed): Link
Wikipedia data files (compressed): Link

Using the checkpoint file:

$ python -m examples.cli \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    reading-comprehension run \
    --data-dir=<DATA_DIR> \
    --checkpoint-file=<CHECKPOINT_FILE> \
    --no-negative \
    --wiki-link-db-file=enwiki_20160305.pkl \
    --model-redirects-file=enwiki_20181220_redirects.pkl \
    --link-redirects-file=enwiki_20160305_redirects.pkl \
    --no-train

Fine-tuning the model:

$ python -m examples.cli \
    --num-gpus=8 \
    --model-file=luke_large_500k.tar.gz \
    --output-dir=<OUTPUT_DIR> \
    reading-comprehension run \
    --data-dir=<DATA_DIR> \
    --no-negative \
    --wiki-link-db-file=enwiki_20160305.pkl \
    --model-redirects-file=enwiki_20181220_redirects.pkl \
    --link-redirects-file=enwiki_20160305_redirects.pkl \
    --train-batch-size=2 \
    --gradient-accumulation-steps=3 \
    --learning-rate=15e-6 \
    --num-train-epochs=2 \
    --fp16

Citation

If you use LUKE in your work, please cite the original paper:

@inproceedings{yamada2020luke,
  title={LUKE: Deep Contextualized Entity Representations with Entity-aware Self-attention},
  author={Ikuya Yamada and Akari Asai and Hiroyuki Shindo and Hideaki Takeda and Yuji Matsumoto},
  booktitle={EMNLP},
  year={2020}
}

Contact Info

Please submit a GitHub issue or send an e-mail to Ikuya Yamada ([email protected]) for help or issues using LUKE.

Owner
Studio Ousia
Studio Ousia
Conversational text Analysis using various NLP techniques

Conversational text Analysis using various NLP techniques

Rita Anjana 159 Jan 06, 2023
PyJPBoatRace: Python-based Japanese boatrace tools 🚤

pyjpboatrace :speedboat: provides you with useful tools for data analysis and auto-betting for boatrace.

5 Oct 29, 2022
NL. The natural language programming language.

NL A Natural-Language programming language. Built using Codex. A few examples are inside the nl_projects directory. How it works Write any code in pur

2 Jan 17, 2022
A workshop with several modules to help learn Feast, an open-source feature store

Workshop: Learning Feast This workshop aims to teach users about Feast, an open-source feature store. We explain concepts & best practices by example,

Feast 52 Jan 05, 2023
A python wrapper around the ZPar parser for English.

NOTE This project is no longer under active development since there are now really nice pure Python parsers such as Stanza and Spacy. The repository w

ETS 49 Sep 12, 2022
a test times augmentation toolkit based on paddle2.0.

Patta Image Test Time Augmentation with Paddle2.0! Input | # input batch of images / / /|\ \ \ # apply

AgentMaker 110 Dec 03, 2022
Twitter bot that uses NLP models to summarize news articles referenced in a user's twitter timeline

Twitter-News-Summarizer Twitter bot that uses NLP models to summarize news articles referenced in a user's twitter timeline 1.) Extracts all tweets fr

Rohit Govindan 1 Jan 27, 2022
PyKaldi is a Python scripting layer for the Kaldi speech recognition toolkit.

PyKaldi is a Python scripting layer for the Kaldi speech recognition toolkit. It provides easy-to-use, low-overhead, first-class Python wrappers for t

922 Dec 31, 2022
Code for ACL 2022 main conference paper "STEMM: Self-learning with Speech-text Manifold Mixup for Speech Translation".

STEMM: Self-learning with Speech-Text Manifold Mixup for Speech Translation This is a PyTorch implementation for the ACL 2022 main conference paper ST

ICTNLP 29 Oct 16, 2022
Bot to connect a real Telegram user, simulating responses with OpenAI's davinci GPT-3 model.

AI-BOT Bot to connect a real Telegram user, simulating responses with OpenAI's davinci GPT-3 model.

Thempra 2 Dec 21, 2022
基于pytorch_rnn的古诗词生成

pytorch_peot_rnn 基于pytorch_rnn的古诗词生成 说明 config.py里面含有训练、测试、预测的参数,更改后运行: python main.py 预测结果 if config.do_predict: result = trainer.generate('丽日照残春')

西西嘛呦 3 May 26, 2022
Multilingual finetuning of Machine Translation model on low-resource languages. Project for Deep Natural Language Processing course.

Low-resource-Machine-Translation This repository contains the code for the project relative to the course Deep Natural Language Processing. The goal o

Andrea Cavallo 3 Jun 22, 2022
This Project is based on NLTK It generates a RANDOM WORD from a predefined list of words, From that random word it read out the word, its meaning with parts of speech , its antonyms, its synonyms

This Project is based on NLTK(Natural Language Toolkit) It generates a RANDOM WORD from a predefined list of words, From that random word it read out the word, its meaning with parts of speech , its

SaiVenkatDhulipudi 2 Nov 17, 2021
This repository serves as a place to document a toy attempt on how to create a generative text model in Catalan, based on GPT-2

GPT-2 Catalan playground and scripts to train a GPT-2 model either from scrath or from another pretrained model.

Laura 1 Jan 28, 2022
Searching keywords in PDF file folders

keyword_searching Steps to use this Python scripts: (1)Paste this script into the file folder containing the PDF files you need to search from; (2)Thi

1 Nov 08, 2021
A Chinese to English Neural Model Translation Project

ZH-EN NMT Chinese to English Neural Machine Translation This project is inspired by Stanford's CS224N NMT Project Dataset used in this project: News C

Zhenbang Feng 29 Nov 26, 2022
AIDynamicTextReader - A simple dynamic text reader based on Artificial intelligence

AI Dynamic Text Reader: This is a simple dynamic text reader based on Artificial

Md. Rakibul Islam 1 Jan 18, 2022
Kerberoast with ACL abuse capabilities

targetedKerberoast targetedKerberoast is a Python script that can, like many others (e.g. GetUserSPNs.py), print "kerberoast" hashes for user accounts

Shutdown 213 Dec 22, 2022
NeuralQA: A Usable Library for Question Answering on Large Datasets with BERT

NeuralQA: A Usable Library for (Extractive) Question Answering on Large Datasets with BERT Still in alpha, lots of changes anticipated. View demo on n

Victor Dibia 220 Dec 11, 2022
Code for hyperboloid embeddings for knowledge graph entities

Implementation for the papers: Self-Supervised Hyperboloid Representations from Logical Queries over Knowledge Graphs, Nurendra Choudhary, Nikhil Rao,

30 Dec 10, 2022