BERTAC (BERT-style transformer-based language model with Adversarially pretrained Convolutional neural network)

Related tags

Text Data & NLPbertac
Overview

BERTAC (BERT-style transformer-based language model with Adversarially pretrained Convolutional neural network)

BERTAC is a framework that combines a Transformer-based Language Model (TLM) such as BERT with an adversarially pretrained CNN (Convolutional Neural Network). It was proposed in our ACL-IJCNLP paper:

We showed in our experiments that BERTAC can improve the performance of TLMs on GLUE and open-domain QA tasks when using ALBERT or RoBERTa as the base TLM.

This repository provides the source code for BERTAC and adversarially pretrained CNN models described in the ACL-IJCNLP 2021 paper.

You can download the code and CNN models by following the procedure described in the "Try BERTAC section." The procedure includes downloading the BERTAC code, installing libraries required to run the code, and downloading pretrained models of the fastText word embedding vectors, the ALBERT xxlarge model, and our adversarially pretrained CNNs. The CNNs provided here were pretrained using the settings described in our ACL-IJCNLP 2021 paper. They can be downloaded automatically by running the script download_pretrained_model.sh as described in the "Try BERTAC section" or manually from the following page: cnn_models/README.md.

After this is done, you can run the GLUE and Open-domain QA experiments in the ACL-IJCNLP 2021 paper by following the procedure described in these pages, examples/GLUE/README.md and examples/QA/README.md. The procedure for the experiments starts from downloading GLUE and open-domain QA datasets (Quasar-T and SearchQA datasets for open-domain QA) and includes preprocessing the dataset and training/evaluating BERTAC models.

Overview of BERTAC

BERTAC is designed to improve Transformer-based Language Models such as ALBERT and BERT by integrating a simple CNN to them. The CNN is pretrained in a GAN (Generative Adversarial Network) style using Wikipedia data. By using as training data sentences in which an entity was masked in a cloze-test style, the CNN can generate alternative entity representations from sentences. BERTAC aims to improve TLMs for a variety of downstream tasks by using multiple text representations computed from different perspectives, i.e., those of TLMs trained by masked language modeling and those of CNNs trained in a GAN style to generate entity representations.

For a technical description of BERTAC, see our paper:

Try BERTAC

Prerequisites

BERTAC requires the following libraries and tools at runtime.

  • CUDA: A CUDA runtime must be available in the runtime environment. Currently, BERTAC has been tested with CUDA 10.1 and 10.2.
  • Python and Pytorch: BERTAC has been tested with Python 3.6 and 3.8, and Pytorch 1.5.1 and 1.8.1.
  • Perl: BERTAC has been tested with Perl 5.16.1 and 5.26.2.

Installation

You can install BERTAC by following the procedure described below.

  • Create a new conda environment bertac using the following command. Set a CUDA version available in your environment.
conda create -n bertac python=3.8 tqdm requests scikit-learn cudatoolkit cudnn lz4
  • Install Pytorch into the conda environment
conda activate bertac
conda install -n bertac pytorch=1.8 -c pytorch
  • Git clone the BERTAC code and run pip install -r requirements.txt in the root directory.
# git clone the code
git clone https://github.com/nict-wisdom/bertac
cd bertac

# Install requirements
pip install -r requirements.txt
  • Download the spaCy model en_core_web_md.
# Download the spaCy model 'en_core_web_md' 
python -m spacy download en_core_web_md
  • Install Perl and its JSON module into the conda environment.
# Install Perl and its JSON module
conda install -c anaconda perl -n bertac38
cpan install JSON
# Download pretrained CNN models, the fastText word embedding vectors, and
# the ALBERT xxlarge model (albert-xxlarge-v2) 
sh download_pretrained_model.sh

Note: the BERTAC code was built on the HuggingFace Transformers v2.4.1 and requires the NVIDIA apex as in the HuggingFace Transformers. Please install the NVIDIA apex following the procedure described in the NVIDIA apex page.

You can enter examples/GLUE or examples/QA folders and try the bash commands under these folders to run GLUE or open-domain QA experiments (see examples/GLUE/README.md and examples/QA/README.md for details on the procedures of the experiments).

GLUE experiments

You can run GLUE experiments by following the procedure described in examples/GLUE/README.md.

Results

The performances of BERTAC and other baseline models on the GLUE development set are shown below.

Models MNLI QNLI QQP RTE SST MRPC CoLA STS Avg.
RoBERTa-large 90.2/90.2 94.7 92.2 86.6 96.4 90.9 68.0 92.4 88.9
ELECTRA-large 90.9/- 95.0 92.4 88.0 96.9 90.8 69.1 92.6 89.5
ALBERT-xxlarge 90.8/- 95.3 92.2 89.2 96.9 90.9 71.4 93.0 90.0
DeBERTa-large 91.1/91.1 95.3 92.3 88.3 96.8 91.9 70.5 92.8 90.0
BERTAC
(ALBERT-xxlarge)
91.3/91.1 95.7 92.3 89.9 97.2 92.4 73.7 93.1 90.7

BERTAC(ALBERT-xxlarge), i.e., BERTAC using ALBERT-xxlarge as its base TLM, showed a higher average score (Avg. of the last column in the table) than (1) ALBERT-xxlarge (the base TLM) and (2) DeBERTa-large (the state-of-the-art method for the GLUE development set).

Open-domain QA experiments

You can run open-domain QA experiments by following the procedure described in examples/QA/README.md.

Results

The performances of BERTAC and other baseline methods on Quasar-T and SearchQA benchmarks are as follows.

Model Quasar-T (EM/F1) SearchQA (EM/F1)
OpenQA 42.2/49.3 58.8/64.5
OpenQA+ARG 43.2/49.7 59.6/65.3
WKLM(BERT-base) 45.8/52.2 61.7/66.7
MBERT(BERT-large) 51.1/59.1 65.1/70.7
CFormer(RoBERTa-large) 54.0/63.9 68.0/75.1
BERTAC(RoBERTa-large) 55.8/63.7 71.9/77.1
BERTAC(ALBERT-xxlarge) 58.0/65.8 74.0/79.2

Here, BERTAC(RoBERTa-large) and BERTAC(ALBERT-xxlarge) represent BERTAC using RoBERTa-large and ALBERT-xxlarge as their base TLM, respectively. BERTAC with any of the base TLMs showed better EM (Exact match with the gold standard answers) than the state-of-the-art method, CFormer(RoBERTa-large), for both benchmarks (Quasar-T and SearchQA).

Citation

If you use this source code, we would appreciate if you cite the following paper:

@inproceedings{ohetal2021bertac,
  title={BERTAC: Enhancing Transformer-based Language Models 
         with Adversarially Pretrained Convolutional Neural Networks},
  author={Jong-Hoon Oh and Ryu Iida and 
          Julien Kloetzer and Kentaro Torisawa},
  booktitle={The Joint Conference of the 59th Annual Meeting  
             of the Association for Computational Linguistics  
             and the 11th International Joint Conference 
             on Natural Language Processing (ACL-IJCNLP 2021)},
  year={2021}
}

Acknowledgements

Part of the source codes is borrowed from HuggingFace Transformers v2.4.1 licensed under Apache 2.0, DrQA licensed under BSD, and Open-QA licensed under MIT.

You might also like...
Natural language processing summarizer using 3 state of the art Transformer models: BERT, GPT2, and T5
Natural language processing summarizer using 3 state of the art Transformer models: BERT, GPT2, and T5

NLP-Summarizer Natural language processing summarizer using 3 state of the art Transformer models: BERT, GPT2, and T5 This project aimed to provide in

Learn meanings behind words is a key element in NLP. This project concentrates on the disambiguation of preposition senses. Therefore, we train a bert-transformer model and surpass the state-of-the-art.

New State-of-the-Art in Preposition Sense Disambiguation Supervisor: Prof. Dr. Alexander Mehler Alexander Henlein Institutions: Goethe University TTLa

LV-BERT: Exploiting Layer Variety for BERT (Findings of ACL 2021)

LV-BERT Introduction In this repo, we introduce LV-BERT by exploiting layer variety for BERT. For detailed description and experimental results, pleas

Pytorch-version BERT-flow: One can apply BERT-flow to any PLM within Pytorch framework.

Pytorch-version BERT-flow: One can apply BERT-flow to any PLM within Pytorch framework.

Create a semantic search engine with a neural network (i.e. BERT) whose knowledge base can be updated

Create a semantic search engine with a neural network (i.e. BERT) whose knowledge base can be updated. This engine can later be used for downstream tasks in NLP such as Q&A, summarization, generation, and natural language understanding (NLU).

PyTorch implementation and pretrained models for XCiT models. See XCiT: Cross-Covariance Image Transformer
PyTorch implementation and pretrained models for XCiT models. See XCiT: Cross-Covariance Image Transformer

Cross-Covariance Image Transformer (XCiT) PyTorch implementation and pretrained models for XCiT models. See XCiT: Cross-Covariance Image Transformer L

A library for finding knowledge neurons in pretrained transformer models.
A library for finding knowledge neurons in pretrained transformer models.

knowledge-neurons An open source repository replicating the 2021 paper Knowledge Neurons in Pretrained Transformers by Dai et al., and extending the t

This repository contains the code for "Generating Datasets with Pretrained Language Models".

Datasets from Instructions (DINO 🦕 ) This repository contains the code for Generating Datasets with Pretrained Language Models. The paper introduces

Composed Image Retrieval using Pretrained LANguage Transformers (CIRPLANT)
Composed Image Retrieval using Pretrained LANguage Transformers (CIRPLANT)

CIRPLANT This repository contains the code and pre-trained models for Composed Image Retrieval using Pretrained LANguage Transformers (CIRPLANT) For d

Releases(cnn_2.3.4.300)
[AAAI 21] Curriculum Labeling: Revisiting Pseudo-Labeling for Semi-Supervised Learning

◥ Curriculum Labeling ◣ Revisiting Pseudo-Labeling for Semi-Supervised Learning Paola Cascante-Bonilla, Fuwen Tan, Yanjun Qi, Vicente Ordonez. In the

UVA Computer Vision 113 Dec 15, 2022
nlabel is a library for generating, storing and retrieving tagging information and embedding vectors from various nlp libraries through a unified interface.

nlabel is a library for generating, storing and retrieving tagging information and embedding vectors from various nlp libraries through a unified interface.

Bernhard Liebl 2 Jun 10, 2022
Code from the paper "High-Performance Brain-to-Text Communication via Handwriting"

Code from the paper "High-Performance Brain-to-Text Communication via Handwriting"

Francis R. Willett 305 Dec 22, 2022
ADCS - Automatic Defect Classification System (ADCS) for SSMC

Table of Contents Table of Contents ADCS Overview Summary Operator's Guide Demo System Design System Logic Training Mode Production System Flow Folder

Tam Zher Min 2 Jun 24, 2022
Natural language Understanding Toolkit

Natural language Understanding Toolkit TOC Requirements Installation Documentation CLSCL NER References Requirements To install nut you need: Python 2

Peter Prettenhofer 119 Oct 08, 2022
💫 Industrial-strength Natural Language Processing (NLP) in Python

spaCy: Industrial-strength NLP spaCy is a library for advanced Natural Language Processing in Python and Cython. It's built on the very latest researc

Explosion 24.9k Jan 02, 2023
Example code for "Real-World Natural Language Processing"

Real-World Natural Language Processing This repository contains example code for the book "Real-World Natural Language Processing." AllenNLP (2.5.0 or

Masato Hagiwara 303 Dec 17, 2022
Journalism AI – Quotes extraction for modular journalism

Quote extraction for modular journalism (JournalismAI collab 2021)

Journalism AI collab 2021 207 Dec 25, 2022
A list of NLP(Natural Language Processing) tutorials built on Tensorflow 2.0.

A list of NLP(Natural Language Processing) tutorials built on Tensorflow 2.0.

Won Joon Yoo 335 Jan 04, 2023
chaii - hindi & tamil question answering

chaii - hindi & tamil question answering This is the solution for rank 5th in Kaggle competition: chaii - Hindi and Tamil Question Answering. The comp

abhishek thakur 33 Dec 18, 2022
IMDB film review sentiment classification based on BERT's supervised learning model.

IMDB film review sentiment classification based on BERT's supervised learning model. On the other hand, the model can be extended to other natural language multi-classification tasks.

Paris 1 Apr 17, 2022
This repo contains simple to use, pretrained/training-less models for speaker diarization.

PyDiar This repo contains simple to use, pretrained/training-less models for speaker diarization. Supported Models Binary Key Speaker Modeling Based o

12 Jan 20, 2022
Indonesia spellchecker with python

indonesia-spellchecker Ganti kata yang terdapat pada file teks.txt untuk diperiksa kebenaran kata. Run on local machine python3 main.py

Rahmat Agung Julians 1 Sep 14, 2022
Paddle2.x version AI-Writer

Paddle2.x 版本AI-Writer 用魔改 GPT 生成网文。Tuned GPT for novel generation.

yujun 74 Jan 04, 2023
The NewSHead dataset is a multi-doc headline dataset used in NHNet for training a headline summarization model.

This repository contains the raw dataset used in NHNet [1] for the task of News Story Headline Generation. The code of data processing and training is available under Tensorflow Models - NHNet.

Google Research Datasets 31 Jul 15, 2022
This project converts your human voice input to its text transcript and to an automated voice too.

Human Voice to Automated Voice & Text Introduction: In this project, whenever you'll speak, it will turn your voice into a robot voice and furthermore

Hassan Shahzad 3 Oct 15, 2021
hashily is a Python module that provides a variety of text decoding and encoding operations.

hashily is a python module that performs a variety of text decoding and encoding functions. It also various functions for encrypting and decrypting text using various ciphers.

DevMysT 5 Jul 17, 2022
COVID-19 Related NLP Papers

COVID-19 outbreak has become a global pandemic. NLP researchers are fighting the epidemic in their own way.

xcfeng 28 Oct 30, 2022
Python functions for summarizing and improving voice dictation input.

Helpmespeak Help me speak uses Python functions for summarizing and improving voice dictation input. Get started with OpenAI gpt-3 OpenAI is a amazing

Margarita Humanitarian Foundation 6 Dec 17, 2022
code for modular summarization work published in ACL2021 by Krishna et al

This repository contains the code for running modular summarization pipelines as described in the publication Krishna K, Khosla K, Bigham J, Lipton ZC

Kundan Krishna 6 Jun 04, 2021