Few-shot Natural Language Generation for Task-Oriented Dialog

Related tags

Text Data & NLPSC-GPT
Overview

Few-shot Natural Language Generation for Task-Oriented Dialog

This repository contains the dataset, source code and trained model for the following paper:

Few-shot Natural Language Generation for Task-Oriented Dialog Baolin Peng, Chenguang Zhu, Chunyuan Li, Xiujun Li, Jinchao Li, Michael Zeng and Jianfeng Gao

ArXiv paper: https://arxiv.org/abs/2002.12328

This repository is based on hugginface transformer package and OpenAI GPT-2, containing model training code and pretrained medium model checkpoint. Some evaluation scripts are adapted from RNNLG. The results indicate that with minimal training examples, SC-GPT is able to generate natural language response given dialog acts naturally and adequately. It can be used to train an NLG model in new domains with very limited examples.

The include scripts can be used to reproduce the results reported in the paper.

Project and demo webpage: https://aka.ms/scgpt

Dataset: FewShotWoz

FewShotWoz is constructed using dataset from RNNLG and MultiWoz.

Data files includes

{domain}/train.json: training set in json format used for evaluation, other package like RNNLG also need this format. {domain}/train.txt: linearized training set for GPT-2 models. {domain}/test.json: testing set in json format. {domain}/test.txt: linearized testing set for GPT-2 models.

Data format

[
"inform(name='hakka restaurant';pricerange=moderate)", 
"hakka restaurant is moderate -ly priced", 
"hakka restaurant is moderate -ly priced" 
]

First item: dialog act
Second item: corresponding natural language description
Thrid item: repeated for evaluation script

Linearized as:
inform ( name = hakka restaurant ; pricerange = moderate ) & hakka restaurant is moderate -ly priced

Pipeline

The code is still under cleanup. More details of code usage will be added soon

Setup

Please use the below command to clone and install the requirements.

git clone https://github.com/pengbaolin/SC-GPT.git
cd SC-GPT
pip install -r requirements.txt

Fetch and unzip the checkpoint

wget https://bapengstorage.blob.core.windows.net/fileshare/scgpt.tar.gz
tar -xvf scgpt.tar.gz

Training

export CUDA_VISIBLE_DEVICES=0
python train.py --output_dir=MODEL_SAVE_PATH --model_type=gpt2 --model_name_or_path=PRE_TRINED_MODEL_PATH --do_train --do_eval --eval_data_file=data/restaurant/train.txt --per_gpu_train_batch_size 1 --num_train_epochs EPOCH --learning_rate LR --overwrite_cache --use_tokenize --train_data_file=data/restaurant/train.txt --overwrite_output_dir

MODEL_SAVE_PATH : Path of the saving model .

PRE_TRAINED_MODEL_PATH : Initial checkpoint; Could start from gpt2, gpt2-meidum or our provided scgpt folder.

EPOCH : Number of training epochs; 5 is enough for a reasonable performance

LR : Learning rate; 5e-5, 1e-5, or 1e-4

Decoding

export CUDA_VISIBLE_DEVICES=0
python generate.py --model_type=gpt2 --model_name_or_path=MODEL_SAVE_PATH --num_samples 5 --input_file=data/restaurant/test.txt --top_k 5 --output_file=results.json --length 80

Evaluate

python evaluator.py --domain restaurant results.json

script for attraction/train/taxi will be provided soon

Interact

python interact.py --model_type=gpt2 --model_name_or_path=MODEL_SAVE_PATH --length 50 --num_samples 5

Try our demo

The live demo is at https://aka.ms/scgpt. Please refer the examples on top to input dialog acts.

Disclaimer

This repository aims to facilitate research in large-scale pretraining for NLG in the context of dialog systems. This toolkit contains only part of the modeling machinery needed to actually produce a model weight file in a running dialog. On its own, this model provides only information about the weights of various text spans; in order for a researcher to actually use it, they will need to bring conversational data of their own and decode the response generation from the pretrained system. Microsoft is not responsible for any generation from the 3rd party utilization of the pretrained system.

Citation

if you use this code and data in your research, please cite our arxiv paper:

@misc{peng2020scgpt,
      title={Few-shot Natural Language Generation for Task-Oriented Dialog},
      author={Baolin Peng, Chenguang Zhu, Chunyuan Li, Xiujun Li, Jinchao Li, Michael Zeng, Jianfeng Gao},
      archivePrefix={arXiv},
      year={2020},
      eprint={2002.12328},
      primaryClass={cs.CL}
}
Disfl-QA: A Benchmark Dataset for Understanding Disfluencies in Question Answering

Disfl-QA is a targeted dataset for contextual disfluencies in an information seeking setting, namely question answering over Wikipedia passages. Disfl-QA builds upon the SQuAD-v2 (Rajpurkar et al., 2

Google Research Datasets 52 Jun 21, 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
🐍 A hyper-fast Python module for reading/writing JSON data using Rust's serde-json.

A hyper-fast, safe Python module to read and write JSON data. Works as a drop-in replacement for Python's built-in json module. This is alpha software

Matthias 479 Jan 01, 2023
This repository contains Python scripts for extracting linguistic features from Filipino texts.

Filipino Text Linguistic Feature Extractors This repository contains scripts for extracting linguistic features from Filipino texts. The scripts were

Joseph Imperial 1 Oct 05, 2021
A website which allows you to play with the GPT-2 transformer

transformers A website which allows you to play with the GPT-2 model Built with ❤️ by raphtlw Table of contents Model Setup About Contributors Model T

raphtlw 2 Jan 27, 2022
Plugin repository for Macast

Macast-plugins Plugin repository for Macast. How to use third-party player plugin Download Macast from GitHub Release. Download the plugin you want fr

109 Jan 04, 2023
Checking spelling of form elements

Checking spelling of form elements. You can check the source files of external workflows/reports and configuration files

СКБ Контур (команда 1с) 15 Sep 12, 2022
IMS-Toucan is a toolkit to train state-of-the-art Speech Synthesis models

IMS-Toucan is a toolkit to train state-of-the-art Speech Synthesis models. Everything is pure Python and PyTorch based to keep it as simple and beginner-friendly, yet powerful as possible.

Digital Phonetics at the University of Stuttgart 247 Jan 05, 2023
A full spaCy pipeline and models for scientific/biomedical documents.

This repository contains custom pipes and models related to using spaCy for scientific documents. In particular, there is a custom tokenizer that adds

AI2 1.3k Jan 03, 2023
Final Project for the Intel AI Readiness Boot Camp NLP (Jan)

NLP Boot Camp (Jan) Synopsis Full Name: Prameya Mohanty Name of your School: Delhi Public School, Rourkela Class: VIII Title of the Project: iTransect

TheCodingHub 1 Feb 01, 2022
Named Entity Recognition API used by TEI Publisher

TEI Publisher Named Entity Recognition API This repository contains the API used by TEI Publisher's web-annotation editor to detect entities in the in

e-editiones.org 14 Nov 15, 2022
🏖 Easy training and deployment of seq2seq models.

Headliner Headliner is a sequence modeling library that eases the training and in particular, the deployment of custom sequence models for both resear

Axel Springer Ideas Engineering GmbH 231 Nov 18, 2022
Modified GPT using average pooling to reduce the softmax attention memory constraints.

NLP-GPT-Upsampling This repository contains an implementation of Open AI's GPT Model. In particular, this implementation takes inspiration from the Ny

WD 1 Dec 03, 2021
Code release for NeX: Real-time View Synthesis with Neural Basis Expansion

NeX: Real-time View Synthesis with Neural Basis Expansion Project Page | Video | Paper | COLAB | Shiny Dataset We present NeX, a new approach to novel

537 Jan 05, 2023
text to speech toolkit. 好用的中文语音合成工具箱,包含语音编码器、语音合成器、声码器和可视化模块。

ttskit Text To Speech Toolkit: 语音合成工具箱。 安装 pip install -U ttskit 注意 可能需另外安装的依赖包:torch,版本要求torch=1.6.0,=1.7.1,根据自己的实际环境安装合适cuda或cpu版本的torch。 ttskit的

KDD 483 Jan 04, 2023
Sentiment-Analysis and EDA on the IMDB Movie Review Dataset

Sentiment-Analysis and EDA on the IMDB Movie Review Dataset The main part of the work focuses on the exploration and study of different approaches whi

Nikolas Petrou 1 Jan 12, 2022
A method for cleaning and classifying text using transformers.

NLP Translation and Classification The repository contains a method for classifying and cleaning text using NLP transformers. Overview The input data

Ray Chamidullin 0 Nov 15, 2022
State-of-the-art NLP through transformer models in a modular design and consistent APIs.

Trapper (Transformers wRAPPER) Trapper is an NLP library that aims to make it easier to train transformer based models on downstream tasks. It wraps h

Open Business Software Solutions 42 Sep 21, 2022
Fast, general, and tested differentiable structured prediction in PyTorch

Torch-Struct: Structured Prediction Library A library of tested, GPU implementations of core structured prediction algorithms for deep learning applic

HNLP 1.1k Dec 16, 2022