PyTorch source code of NAACL 2019 paper "An Embarrassingly Simple Approach for Transfer Learning from Pretrained Language Models"

Related tags

Text Data & NLPsiatl
Overview

This repository contains source code for NAACL 2019 paper "An Embarrassingly Simple Approach for Transfer Learning from Pretrained Language Models" (Paper link)

Introduction

This paper presents a simple transfer learning approach that addresses the problem of catastrophic forgetting. We pretrain a language model and then transfer it to a new model, to which we add a recurrent layer and an attention mechanism. Based on multi-task learning, we use a weighted sum of losses (language model loss and classification loss) and fine-tune the pretrained model on our (classification) task.

Architecture

Step 1:

  • Pretraining of a word-level LSTM-based language model

Step 2:

  • Fine-tuning the language model (LM) on a classification task

  • Use of an auxiliary LM loss

  • Employing 2 different optimizers (1 for the pretrained part and 1 for the newly added part)

  • Sequentially unfreezing

Reference

@inproceedings{chronopoulou-etal-2019-embarrassingly,
    title = "An Embarrassingly Simple Approach for Transfer Learning from Pretrained Language Models",
    author = "Chronopoulou, Alexandra  and
      Baziotis, Christos  and
      Potamianos, Alexandros",
    booktitle = "Proceedings of the 2019 Conference of the North {A}merican Chapter of the Association for Computational Linguistics: Human Language Technologies, Volume 1 (Long and Short Papers)",
    month = jun,
    year = "2019",
    address = "Minneapolis, Minnesota",
    publisher = "Association for Computational Linguistics",
    url = "https://www.aclweb.org/anthology/N19-1213",
    pages = "2089--2095",
}

Prerequisites

Dependencies

  • PyTorch version >=0.4.0

  • Python version >= 3.6

Install Requirements

Create Environment (Optional): Ideally, you should create a conda environment for the project.

conda create -n siatl python=3
conda activate siatl

Install PyTorch 0.4.0 with the desired cuda version to use the GPU:

conda install pytorch==0.4.0 torchvision -c pytorch

Then install the rest of the requirements:

pip install -r requirements.txt

Download Data

You can find Sarcasm Corpus V2 (link) under datasets/

Plot visualization

Visdom is used to visualized metrics during training. You should start the server through the command line (using tmux or screen) by typing visdom. You will be then able to see the visualizations by going to http://localhost:8097 in your browser.

Check here for more: https://github.com/facebookresearch/visdom#usage

Training

In order to train the model, either the LM or the SiATL, you need to run the corresponding python script and pass as an argument a yaml model config. The yaml config specifies all the configuration details of the experiment to be conducted. To make any changes to a model, change an existing or create a new yaml config file.

The yaml config files can be found under model_configs/ directory.

Use the pretrained Language Model:

cd checkpoints/
wget https://www.dropbox.com/s/lalizxf3qs4qd3a/lm20m_70K.pt 

(Download it and place it in checkpoints/ directory)

(Optional) Train a Language Model:

Assuming you have placed the training and validation data under datasets/<name_of_your_corpus/train.txt, datasets/<name_of_your_corpus/valid.txt (check the model_configs/lm_20m_word.yaml's data section), you can train a LM.

See for example:

python models/sent_lm.py -i lm_20m_word.yaml

Fine-tune the Language Model on the labeled dataset, using an auxiliary LM loss, 2 optimizers and sequential unfreezing, as described in the paper:

To fine-tune it on the Sarcasm Corpus V2 dataset:

python models/run_clf.py -i SCV2_aux_ft_gu.yaml --aux_loss --transfer

  • -i: Configuration yaml file (under model_configs/)
  • --aux_loss: You can choose if you want to use an auxiliary LM loss
  • --transfer: You can choose if you want to use a pretrained LM to initalize the embedding and hidden layer of your model. If not, they will be randomly initialized
Owner
Alexandra Chronopoulou
Research Intern at AllenAI. CS PhD student in LMU Munich.
Alexandra Chronopoulou
DELTA is a deep learning based natural language and speech processing platform.

DELTA - A DEep learning Language Technology plAtform What is DELTA? DELTA is a deep learning based end-to-end natural language and speech processing p

DELTA 1.5k Dec 26, 2022
Multilingual Emotion classification using BERT (fine-tuning). Published at the WASSA workshop (ACL2022).

XLM-EMO: Multilingual Emotion Prediction in Social Media Text Abstract Detecting emotion in text allows social and computational scientists to study h

MilaNLP 35 Sep 17, 2022
Behavioral Testing of Clinical NLP Models

Behavioral Testing of Clinical NLP Models This repository contains code for testing the behavior of clinical prediction models based on patient letter

Betty van Aken 2 Sep 20, 2022
Code for lyric-section-to-comment generation based on huggingface transformers.

CommentGeneration Code for lyric-section-to-comment generation based on huggingface transformers. Migrate Guyu model and code (both 12-layers and 24-l

Yawei Sun 8 Sep 04, 2021
Labelling platform for text using distant supervision

With DataQA, you can label unstructured text documents using rule-based distant supervision.

245 Aug 05, 2022
A model library for exploring state-of-the-art deep learning topologies and techniques for optimizing Natural Language Processing neural networks

A Deep Learning NLP/NLU library by Intel® AI Lab Overview | Models | Installation | Examples | Documentation | Tutorials | Contributing NLP Architect

Intel Labs 2.9k Jan 02, 2023
KLUE-baseline contains the baseline code for the Korean Language Understanding Evaluation (KLUE) benchmark.

KLUE Baseline Korean(한국어) KLUE-baseline contains the baseline code for the Korean Language Understanding Evaluation (KLUE) benchmark. See our paper fo

74 Dec 13, 2022
Awesome-NLP-Research (ANLP)

Awesome-NLP-Research (ANLP)

Language, Information, and Learning at Yale 72 Dec 19, 2022
Code for Discovering Topics in Long-tailed Corpora with Causal Intervention.

Code for Discovering Topics in Long-tailed Corpora with Causal Intervention ACL2021 Findings Usage 0. Prepare environment Requirements: python==3.6 te

Xiaobao Wu 8 Dec 16, 2022
Dope Wars game engine on StarkNet L2 roll-up

RYO Dope Wars game engine on StarkNet L2 roll-up. What TI-83 drug wars built as smart contract system. Background mechanism design notion here. Initia

104 Dec 04, 2022
A simple tool to update bib entries with their official information (e.g., DBLP or the ACL anthology).

Rebiber: A tool for normalizing bibtex with official info. We often cite papers using their arXiv versions without noting that they are already PUBLIS

(Bill) Yuchen Lin 2k Jan 01, 2023
無料で使える中品質なテキスト読み上げソフトウェア、VOICEVOXの音声合成エンジン

VOICEVOX ENGINE VOICEVOXの音声合成エンジン。 実態は HTTP サーバーなので、リクエストを送信すればテキスト音声合成できます。 API ドキュメント VOICEVOX ソフトウェアを起動した状態で、ブラウザから

Hiroshiba 3 Jul 05, 2022
ETM - R package for Topic Modelling in Embedding Spaces

ETM - R package for Topic Modelling in Embedding Spaces This repository contains an R package called topicmodels.etm which is an implementation of ETM

bnosac 37 Nov 06, 2022
A Fast Command Analyser based on Dict and Pydantic

Alconna Alconna 隶属于ArcletProject, 在Cesloi内有内置 Alconna 是 Cesloi-CommandAnalysis 的高级版,支持解析消息链 一般情况下请当作简易的消息链解析器/命令解析器 文档 暂时的文档 Example from arclet.alcon

19 Jan 03, 2023
Türkçe küfürlü içerikleri bulan bir yapay zeka kütüphanesi / An ML library for profanity detection in Turkish sentences

"Kötü söz sahibine aittir." -Anonim Nedir? sinkaf uygunsuz yorumların bulunmasını sağlayan bir python kütüphanesidir. Farkı nedir? Diğer algoritmalard

KaraGoz 4 Feb 18, 2022
Unsupervised Abstract Reasoning for Raven’s Problem Matrices

Unsupervised Abstract Reasoning for Raven’s Problem Matrices This code is the implementation of our TIP paper. This is the first unsupervised abstract

Tao Zhuo 9 Dec 17, 2022
Spooky Skelly For Python

_____ _ _____ _ _ _ | __| ___ ___ ___ | |_ _ _ | __|| |_ ___ | || | _ _ |__ || . || . || . || '

Kur0R1uka 1 Dec 23, 2021
Simple bots or Simbots is a library designed to create simple bots using the power of python. This library utilises Intent, Entity, Relation and Context model to create bots .

Simple bots or Simbots is a library designed to create simple chat bots using the power of python. This library utilises Intent, Entity, Relation and

14 Dec 15, 2021
Search with BERT vectors in Solr and Elasticsearch

Search with BERT vectors in Solr and Elasticsearch

Dmitry Kan 123 Dec 29, 2022
a CTF web challenge about making screenshots

screenshotter (web) A CTF web challenge about making screenshots. It is inspired by a bug found in real life. The challenge was created by @LiveOverfl

219 Jan 02, 2023