Code for our ACL 2021 paper "One2Set: Generating Diverse Keyphrases as a Set"

Overview

One2Set

This repository contains the code for our ACL 2021 paper “One2Set: Generating Diverse Keyphrases as a Set”.

Our implementation is built on the source code from keyphrase-generation-rl and fastNLP. Thanks for their work.

If you use this code, please cite our paper:

@inproceedings{ye2021one2set,
  title={One2Set: Generating Diverse Keyphrases as a Set},
  author={Ye, Jiacheng and Gui, Tao and Luo, Yichao and Xu, Yige and Zhang, Qi},
  booktitle={Proceedings of ACL},
  year={2021}
}

Dependency

  • python 3.5+
  • pytorch 1.0+

Dataset

The datasets can be downloaded from here, which are the tokenized version of the datasets provided by Ken Chen:

  • The testsets directory contains the five datasets for testing (i.e., inspec, krapivin, nus, and semeval and kp20k), where each of the datasets contains test_src.txt and test_trg.txt.
  • The kp20k_separated directory contains the training and validation files (i.e., train_src.txt, train_trg.txt, valid_src.txt and valid_trg.txt).
  • Each line of the *_src.txt file is the source document, which contains the tokenized words of title <eos> abstract .
  • Each line of the *_trg.txt file contains the target keyphrases separated by an ; character. The <peos> is used to mark the end of present ground-truth keyphrases and train a separate set loss for SetTrans model. For example, each line can be like present keyphrase one;present keyphrase two;<peos>;absent keyprhase one;absent keyphrase two.

Quick Start

The whole process includes the following steps:

  • Preprocessing: The preprocess.py script numericalizes the train_src.txt, train_trg.txt,valid_src.txt and valid_trg.txt files, and produces train.one2many.pt, valid.one2many.pt and vocab.pt.
  • Training: The train.py script loads the train.one2many.pt, valid.one2many.pt and vocab.pt file and performs training. We evaluate the model every 8000 batches on the valid set, and the model will be saved if the valid loss is lower than the previous one.
  • Decoding: The predict.py script loads the trained model and performs decoding on the five test datasets. The prediction file will be saved, which is like predicted keyphrase one;predicted keyphrase two;…. For SetTrans, we ignore the $\varnothing$ predictions that represent the meaning of “no corresponding keyphrase”.
  • Evaluation: The evaluate_prediction.py script loads the ground-truth and predicted keyphrases, and calculates the [email protected]$ and [email protected]$ metrics.

For the sake of simplicity, we provide an one-click script in the script directory. You can run the following command to run the whole process with SetTrans model under One2Set paradigm:

bash scripts/run_one2set.sh

You can also run the baseline Transformer model under One2Seq paradigm with the following command:

bash scripts/run_one2seq.sh

Note:

  • Please download and unzip the datasets in the ./data directory first.
  • To run all the bash files smoothly, you may need to specify the correct home_dir (i.e., the absolute path to kg_one2set dictionary) and the gpu id for CUDA_VISIBLE_DEVICES. We provide a small amount of data to quickly test whether your running environment is correct. You can test by running the following command:
bash scripts/run_small_one2set.sh

Resources

You can download our trained model here. We also provide raw predictions and corresponding evaluation results of three runs with different random seeds here, which contains the following files:

test
├── Full_One2set_Copy_Seed27_Dropout0.1_LR0.0001_BS12_MaxLen6_MaxNum20_LossScalePre0.2_LossScaleAb0.1_Step2_SetLoss
│   ├── inspec
│   │   ├── predictions.txt
│   │   └── results_log_5_M_5_M_5_M.txt
│   ├── kp20k
│   │   ├── predictions.txt
│   │   └── results_log_5_M_5_M_5_M.txt
│   ├── krapivin
│   │   ├── predictions.txt
│   │   └── results_log_5_M_5_M_5_M.txt
│   ├── nus
│   │   ├── predictions.txt
│   │   └── results_log_5_M_5_M_5_M.txt
│   └── semeval
│       ├── predictions.txt
│       └── results_log_5_M_5_M_5_M.txt
├── Full_One2set_Copy_Seed527_Dropout0.1_LR0.0001_BS12_MaxLen6_MaxNum20_LossScalePre0.2_LossScaleAb0.1_Step2_SetLoss
│   ├── ...
└── Full_One2set_Copy_Seed9527_Dropout0.1_LR0.0001_BS12_MaxLen6_MaxNum20_LossScalePre0.2_LossScaleAb0.1_Step2_SetLoss
    ├── ...
A CV toolkit for my papers.

PyTorch-Encoding created by Hang Zhang Documentation Please visit the Docs for detail instructions of installation and usage. Please visit the link to

Hang Zhang 2k Jan 04, 2023
Fast, differentiable sorting and ranking in PyTorch

Torchsort Fast, differentiable sorting and ranking in PyTorch. Pure PyTorch implementation of Fast Differentiable Sorting and Ranking (Blondel et al.)

Teddy Koker 655 Jan 04, 2023
OpenVisionAPI server

🚀 Quick start An instance of ova-server is free and publicly available here: https://api.openvisionapi.com Checkout ova-client for a quick demo. Inst

Open Vision API 93 Nov 24, 2022
Решения, подсказки, тесты и утилиты для тренировки по алгоритмам от Яндекса.

Решения и подсказки к тренировке по алгоритмам от Яндекса Что есть внутри Решения с подсказками и комментариями; рекомендую сначала смотреть md файл п

Yankovsky Andrey 50 Dec 26, 2022
Scripts and a shader to get you started on setting up an exported Koikatsu character in Blender.

KK Blender Shader Pack A plugin and a shader to get you started with setting up an exported Koikatsu character in Blender. The plugin is a Blender add

166 Jan 01, 2023
Rank 3 : Source code for OPPO 6G Data Generation Challenge

OPPO 6G Data Generation with an E2E Framework Homepage of OPPO 6G Data Generation Challenge Datasets H1_32T4R.mat H2_32T4R.mat Please put the original

Sen Pei 97 Jan 07, 2023
pixelNeRF: Neural Radiance Fields from One or Few Images

pixelNeRF: Neural Radiance Fields from One or Few Images Alex Yu, Vickie Ye, Matthew Tancik, Angjoo Kanazawa UC Berkeley arXiv: http://arxiv.org/abs/2

Alex Yu 1k Jan 04, 2023
The DL Streamer Pipeline Zoo is a catalog of optimized media and media analytics pipelines.

The DL Streamer Pipeline Zoo is a catalog of optimized media and media analytics pipelines. It includes tools for downloading pipelines and their dependencies and tools for measuring their performace

8 Dec 04, 2022
ShapeGlot: Learning Language for Shape Differentiation

ShapeGlot: Learning Language for Shape Differentiation Created by Panos Achlioptas, Judy Fan, Robert X.D. Hawkins, Noah D. Goodman, Leonidas J. Guibas

Panos 32 Dec 23, 2022
Auxiliary data to the CHIIR paper Searching to Learn with Instructional Scaffolding

Searching to Learn with Instructional Scaffolding This is the data and analysis code for the paper "Searching to Learn with Instructional Scaffolding"

Arthur Câmara 2 Mar 02, 2022
Deep learning operations reinvented (for pytorch, tensorflow, jax and others)

This video in better quality. einops Flexible and powerful tensor operations for readable and reliable code. Supports numpy, pytorch, tensorflow, and

Alex Rogozhnikov 6.2k Jan 01, 2023
Awesome Deep Graph Clustering is a collection of SOTA, novel deep graph clustering methods

ADGC: Awesome Deep Graph Clustering ADGC is a collection of state-of-the-art (SOTA), novel deep graph clustering methods (papers, codes and datasets).

yueliu1999 297 Dec 27, 2022
Neighborhood Contrastive Learning for Novel Class Discovery

Neighborhood Contrastive Learning for Novel Class Discovery This repository contains the official implementation of our paper: Neighborhood Contrastiv

Zhun Zhong 56 Dec 09, 2022
DexterRedTool - Dexter's Red Team Tool that creates cronjob/task scheduler to consistently creates users

DexterRedTool Author: Dexter Delandro CSEC 473 - Spring 2022 This tool persisten

2 Feb 16, 2022
CUP-DNN is a deep neural network model used to predict tissues of origin for cancers of unknown of primary.

CUP-DNN CUP-DNN is a deep neural network model used to predict tissues of origin for cancers of unknown of primary. The model was trained on the expre

1 Oct 27, 2021
Flexible Option Learning - NeurIPS 2021

Flexible Option Learning This repository contains code for the paper Flexible Option Learning presented as a Spotlight at NeurIPS 2021. The implementa

Martin Klissarov 7 Nov 09, 2022
Implementation for Simple Spectral Graph Convolution in ICLR 2021

Simple Spectral Graph Convolutional Overview This repo contains an example implementation of the Simple Spectral Graph Convolutional (S^2GC) model. Th

allenhaozhu 64 Dec 31, 2022
Official PyTorch implementation of Synergies Between Affordance and Geometry: 6-DoF Grasp Detection via Implicit Representations

Synergies Between Affordance and Geometry: 6-DoF Grasp Detection via Implicit Representations Zhenyu Jiang, Yifeng Zhu, Maxwell Svetlik, Kuan Fang, Yu

UT-Austin Robot Perception and Learning Lab 63 Jan 03, 2023
The 2nd place solution of 2021 google landmark retrieval on kaggle.

Leaderboard, taxonomy, and curated list of few-shot object detection papers.

229 Dec 13, 2022
ShinRL: A Library for Evaluating RL Algorithms from Theoretical and Practical Perspectives

Status: Under development (expect bug fixes and huge updates) ShinRL: A Library for Evaluating RL Algorithms from Theoretical and Practical Perspectiv

37 Dec 28, 2022