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This repository is the official implementation of our paper MVP: Multi-task Supervised Pre-training for Natural Language Generation.

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MVP: Multi-task Supervised Pre-training for Natural Language Generation

This repository is the official implementation of our paper https://arxiv.org/abs/2206.12131. The implementation is completely based on our text generation library TextBox 2.0.

Overview

  • MVP follows a standard Transformer encoder-decoder architecture.
  • MVP is supervised pre-trained using labeled datasets.
  • MVP also has task-specific soft prompts to stimulate the model's capacity in performing a certain task.
  • MVP is specially designed for natural language generation and can be adapted to a wide range of generation tasks. Our model can also be adapted to natural language understanding tasks.

model

Tips:

  • We have released a series of models in HuggingFace, including MVP, MVP with task-specific prompts, and multi-task pre-trained variants.
  • If you want to use a model without prompts, you can load it through MvpForConditionalGeneration.from_pretrained('RUCAIBox/mvp').
  • If you want to use a model with task-specific prompts, such as summarization, you can load it through MvpForConditionalGeneration.from_pretrained('RUCAIBox/mvp-summarization').
  • Our model supports lightweight prompt tuning following Prefix-tuning with config lightweight_tuning=True.

Installation

You should clone the TextBox repository and follow its instructions.

git clone https://github.com/RUCAIBox/TextBox.git && cd TextBox
bash install.sh

Datasets

You can download our datasets for fine-tuning in: https://huggingface.co/RUCAIBox. You should create a folder dataset and download dataset such as cnndm in it.

Now we support 11 generation tasks and corresponding datasets:

  • Text summarization: CNN/Daily Mail (cnndm), XSum (xsum), SAMSum (samsum), and WLE (wle).
  • Open-ended dialogue system: PersonaChat (pc), DailyDialog (dd), DSTC7-AVSD (da), and SGD (sgd).
  • Data-to-text generation: WebNLG v2.1 (webnlg), WebNLG v3.0 (webnlg2), WikiBio (wikibio), E2E (e2e), DART (dart), and ToTTo (totto).
  • Question generation: SQuAD (squadqg) and CoQA (coqaqg).
  • Story generation: ROCStories (roc) and WritingPrompts (wp).
  • Question answering: SQuAD (squad) and CoQA (coqa).
  • Task-oriented dialogue system: MultiWOZ 2.0 (multiwoz).
  • Commonsense generation: CommonGen (cg).
  • Text simplification: WikiAuto + Turk/ASSET (wia).
  • Paraphrase generation: Quora (quora).
  • Text style transfer: GYAFC-E&M and F&R (gyafc_em, gyafc_fr).

Fine-tuning, Inference and Evaluation

After downloading the dataset, our code can conduct fine-tuning, inference and evaluation in a pipeline.

We propose MVP, MVP+S/M, Single, and BART in our paper, details can be found here.

Fine-tuning with MVP:

python run_textbox.py --model=MVP --dataset=[dataset_name] --model_path=RUCAIBox/mvp

dataset_name can be one of the name under dataset folder, such as cnndm and webnlg.

Fine-tuning with MVP+S/M:

python run_textbox.py --model=MVP --dataset=[dataset_name] --model_path=RUCAIBox/mvp-[task_name]

task_name can be selected from summarization, open-dialog, data-to-text, question-generation, story, question-answering and task-dialog. If you want to fine-tune MVP+M, the task_name should be multi-task.

For example, to fine-tune squadqg dataset on question generation using MVP+S:

python run_textbox.py --model=MVP --dataset=squadqg --model_path=RUCAIBox/mvp-question-generation

Fine-tuning with Single and BART:

python run_textbox.py --model=MVP --dataset=[dataset_name] --model_path=RUCAIBox/mtl-[task_name]

task_name can be selected from summarization, open-dialog, data-to-text, question-generation, story, question-answering and task-dialog.

We also support to fine-tune with BART:

python run_textbox.py --model=BART --dataset=[dataset_name] --model_path=facebook/bart-large

Lightweight Tuning:

If you want to conduct lightweight tuning of MVP+S/M, just add the option --lightweight_tuning=True in the script.

For example, to lightweight tune roc dataset using MVP+M:

python run_textbox.py --model=MVP --dataset=roc --model_path=RUCAIBox/mvp-multi-task --lightweight_tuning=True

We also support to lightweight tune with BART+R (i.e., Prefix-tuning) here.

Citation

@article{tang2022mvp,
  title={MVP: Multi-task Supervised Pre-training for Natural Language Generation},
  author={Tang, Tianyi and Li, Junyi and Zhao, Wayne Xin and Wen, Ji-Rong},
  journal={arXiv preprint arXiv:2206.12131},
  year={2022},
  url={https://arxiv.org/abs/2206.12131},
}