A pytorch implementation of the ACL2019 paper "Simple and Effective Text Matching with Richer Alignment Features".

Overview

RE2

This is a pytorch implementation of the ACL 2019 paper "Simple and Effective Text Matching with Richer Alignment Features". The original Tensorflow implementation: https://github.com/alibaba-edu/simple-effective-text-matching.

Quick Links

Simple and Effective Text Matching

RE2 is a fast and strong neural architecture for general purpose text matching applications. In a text matching task, a model takes two text sequences as input and predicts their relationship. This method aims to explore what is sufficient for strong performance in these tasks. It simplifies many slow components which are previously considered as core building blocks in text matching, while keeping three key features directly available for inter-sequence alignment: original point-wise features, previous aligned features, and contextual features.

RE2 achieves performance on par with the state of the art on four benchmark datasets: SNLI, SciTail, Quora and WikiQA, across tasks of natural language inference, paraphrase identification and answer selection with no or few task-specific adaptations. It has at least 6 times faster inference speed compared to similarly performed models.

The following table lists major experiment results. The paper reports the average and standard deviation of 10 runs. Inference time (in seconds) is measured by processing a batch of 8 pairs of length 20 on Intel i7 CPUs. The computation time of POS features used by CSRAN and DIIN is not included.

Model SNLI SciTail Quora WikiQA Inference Time
BiMPM 86.9 - 88.2 0.731 0.05
ESIM 88.0 70.6 - - -
DIIN 88.0 - 89.1 - 1.79
CSRAN 88.7 86.7 89.2 - 0.28
RE2 88.9±0.1 86.0±0.6 89.2±0.2 0.7618 ±0.0040 0.03~0.05

Refer to the paper for more details of the components and experiment results.

Setup

Data used in the paper are prepared as follows:

SNLI

  • Download and unzip SNLI (pre-processed by Tay et al.) to data/orig.
  • Unzip all zip files in the "data/orig/SNLI" folder. (cd data/orig/SNLI && gunzip *.gz)
  • cd data && python prepare_snli.py

SciTail

  • Download and unzip SciTail dataset to data/orig.
  • cd data && python prepare_scitail.py

Quora

  • Download and unzip Quora dataset (pre-processed by Wang et al.) to data/orig.
  • cd data && python prepare_quora.py

WikiQA

  • Download and unzip WikiQA to data/orig.
  • cd data && python prepare_wikiqa.py
  • Download and unzip evaluation scripts. Use the make -B command to compile the source files in qg-emnlp07-data/eval/trec_eval-8.0. Move the binary file "trec_eval" to resources/.

Usage

To train a new text matching model, run the following command:

python train.py $config_file.json5

Example configuration files are provided in configs/:

  • configs/main.json5: replicate the main experiment result in the paper.
  • configs/robustness.json5: robustness checks
  • configs/ablation.json5: ablation study

The instructions to write your own configuration files:

[
    {
        name: 'exp1', // name of your experiment, can be the same across different data
        __parents__: [
            'default', // always put the default on top
            'data/quora', // data specific configurations in `configs/data`
            // 'debug', // use "debug" to quick debug your code  
        ],
        __repeat__: 5,  // how may repetitions you want
        blocks: 3, // other configurations for this experiment 
    },
    // multiple configurations are executed sequentially
    {
        name: 'exp2', // results under the same name will be overwritten
        __parents__: [
            'default', 
            'data/quora',
        ],
        __repeat__: 5,  
        blocks: 4, 
    }
]

To check the configurations only, use

python train.py $config_file.json5 --dry

To evaluate an existed model, use python evaluate.py $model_path $data_file, here's an example:

python evaluate.py models/snli/benchmark/best.pt data/snli/train.txt 
python evaluate.py models/snli/benchmark/best.pt data/snli/test.txt 

Note that multi-GPU training is not yet supported in the pytorch implementation. A single 16G GPU is sufficient for training when blocks < 5 with hidden size 200 and batch size 512. All the results reported in the paper except the robustness checks can be reproduced with a single 16G GPU.

Citation

Please cite the ACL paper if you use RE2 in your work:

@inproceedings{yang2019simple,
  title={Simple and Effective Text Matching with Richer Alignment Features},
  author={Yang, Runqi and Zhang, Jianhai and Gao, Xing and Ji, Feng and Chen, Haiqing},
  booktitle={Association for Computational Linguistics (ACL)},
  year={2019}
}

License

This project is under Apache License 2.0.

PyTorch implementation of "Continual Learning with Deep Generative Replay", NIPS 2017

pytorch-deep-generative-replay PyTorch implementation of Continual Learning with Deep Generative Replay, NIPS 2017 Results Continual Learning on Permu

Junsoo Ha 127 Dec 14, 2022
Convert Pytorch model to onnx or tflite, and the converted model can be visualized by Netron

Convert Pytorch model to onnx or tflite, and the converted model can be visualized by Netron

Roxbili 5 Nov 19, 2022
PyTorch implementation of the Pose Residual Network (PRN)

Pose Residual Network This repository contains a PyTorch implementation of the Pose Residual Network (PRN) presented in our ECCV 2018 paper: Muhammed

Salih Karagoz 289 Nov 28, 2022
Code for Boundary-Aware Segmentation Network for Mobile and Web Applications

BASNet Boundary-Aware Segmentation Network for Mobile and Web Applications This repository contain implementation of BASNet in tensorflow/keras. comme

Hamid Ali 8 Nov 24, 2022
Repository for "Improving evidential deep learning via multi-task learning," published in AAAI2022

Improving evidential deep learning via multi task learning It is a repository of AAAI2022 paper, “Improving evidential deep learning via multi-task le

deargen 11 Nov 19, 2022
Discretized Integrated Gradients for Explaining Language Models (EMNLP 2021)

Discretized Integrated Gradients for Explaining Language Models (EMNLP 2021) Overview of paths used in DIG and IG. w is the word being attributed. The

INK Lab @ USC 17 Oct 27, 2022
🇰🇷 Text to Image in Korean

KoDALLE Utilizing pretrained language model’s token embedding layer and position embedding layer as DALLE’s text encoder. Background Training DALLE mo

HappyFace 74 Sep 22, 2022
DeepCAD: A Deep Generative Network for Computer-Aided Design Models

DeepCAD This repository provides source code for our paper: DeepCAD: A Deep Generative Network for Computer-Aided Design Models Rundi Wu, Chang Xiao,

Rundi Wu 85 Dec 31, 2022
AWS documentation corpus for zero-shot open-book question answering.

aws-documentation We present the AWS documentation corpus, an open-book QA dataset, which contains 25,175 documents along with 100 matched questions a

Sia Gholami 2 Jul 07, 2022
Outlier Exposure with Confidence Control for Out-of-Distribution Detection

OOD-detection-using-OECC This repository contains the essential code for the paper Outlier Exposure with Confidence Control for Out-of-Distribution De

Nazim Shaikh 64 Nov 02, 2022
A PaddlePaddle implementation of Time Interval Aware Self-Attentive Sequential Recommendation.

TiSASRec.paddle A PaddlePaddle implementation of Time Interval Aware Self-Attentive Sequential Recommendation. Introduction 论文:Time Interval Aware Sel

Paddorch 2 Nov 28, 2021
Official repository for ABC-GAN

ABC-GAN The work represented in this repository is the result of a 14 week semesterthesis on photo-realistic image generation using generative adversa

IgorSusmelj 10 Jun 23, 2022
An easier way to build neural search on the cloud

An easier way to build neural search on the cloud Jina is a deep learning-powered search framework for building cross-/multi-modal search systems (e.g

Jina AI 17k Jan 02, 2023
Incremental Transformer Structure Enhanced Image Inpainting with Masking Positional Encoding (CVPR2022)

Incremental Transformer Structure Enhanced Image Inpainting with Masking Positional Encoding by Qiaole Dong*, Chenjie Cao*, Yanwei Fu Paper and Supple

Qiaole Dong 190 Dec 27, 2022
A mini lib that implements several useful functions binding to PyTorch in C++.

Torch-gather A mini library that implements several useful functions binding to PyTorch in C++. What does gather do? Why do we need it? When dealing w

maxwellzh 8 Sep 07, 2022
Deep Learning as a Cloud API Service.

Deep API Deep Learning as Cloud APIs. This project provides pre-trained deep learning models as a cloud API service. A web interface is available as w

Wu Han 4 Jan 06, 2023
Code for the Shortformer model, from the paper by Ofir Press, Noah A. Smith and Mike Lewis.

Shortformer This repository contains the code and the final checkpoint of the Shortformer model. This file explains how to run our experiments on the

Ofir Press 138 Apr 15, 2022
Official codes: Self-Supervised Learning by Estimating Twin Class Distribution

TWIST: Self-Supervised Learning by Estimating Twin Class Distributions Codes and pretrained models for TWIST: @article{wang2021self, title={Self-Sup

Bytedance Inc. 85 Dec 15, 2022
Pytorch implementation of SenFormer: Efficient Self-Ensemble Framework for Semantic Segmentation

SenFormer: Efficient Self-Ensemble Framework for Semantic Segmentation Efficient Self-Ensemble Framework for Semantic Segmentation by Walid Bousselham

61 Dec 26, 2022