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.

Algorithmic Trading using RNN

Deep-Trading This an implementation adapted from Rachnog Neural networks for algorithmic trading. Part One — Simple time series forecasting and this c

Hazem Nomer 29 Sep 04, 2022
Neural Architecture Search Powered by Swarm Intelligence 🐜

Neural Architecture Search Powered by Swarm Intelligence 🐜 DeepSwarm DeepSwarm is an open-source library which uses Ant Colony Optimization to tackle

288 Oct 28, 2022
[ICLR2021oral] Rethinking Architecture Selection in Differentiable NAS

DARTS-PT Code accompanying the paper ICLR'2021: Rethinking Architecture Selection in Differentiable NAS Ruochen Wang, Minhao Cheng, Xiangning Chen, Xi

Ruochen Wang 86 Dec 27, 2022
A Python library for generating new text from existing samples.

ReMarkov is a Python library for generating text from existing samples using Markov chains. You can use it to customize all sorts of writing from birt

8 May 17, 2022
Dynamic Environments with Deformable Objects (DEDO)

DEDO - Dynamic Environments with Deformable Objects DEDO is a lightweight and customizable suite of environments with deformable objects. It is aimed

Rika 32 Dec 22, 2022
PyTorch code for training MM-DistillNet for multimodal knowledge distillation

There is More than Meets the Eye: Self-Supervised Multi-Object Detection and Tracking with Sound by Distilling Multimodal Knowledge MM-DistillNet is a

51 Dec 20, 2022
Custom studies about block sparse attention.

Block Sparse Attention 研究总结 本人近半年来对Block Sparse Attention(块稀疏注意力)的研究总结(持续更新中)。按时间顺序,主要分为如下三部分: PyTorch 自定义 CUDA 算子——以矩阵乘法为例 基于 Triton 的 Block Sparse A

Chen Kai 2 Jan 09, 2022
To model the probability of a soccer coach leave his/her team during Campeonato Brasileiro for 10 chosen teams and considering years 2018, 2019 and 2020.

To model the probability of a soccer coach leave his/her team during Campeonato Brasileiro for 10 chosen teams and considering years 2018, 2019 and 2020.

Larissa Sayuri Futino Castro dos Santos 1 Jan 20, 2022
[NIPS 2021] UOTA: Improving Self-supervised Learning with Automated Unsupervised Outlier Arbitration.

UOTA: Improving Self-supervised Learning with Automated Unsupervised Outlier Arbitration This repository is the official PyTorch implementation of UOT

6 Jun 29, 2022
基于YoloX目标检测+DeepSort算法实现多目标追踪Baseline

项目简介: 使用YOLOX+Deepsort实现车辆行人追踪和计数,代码封装成一个Detector类,更容易嵌入到自己的项目中。 代码地址(欢迎star): https://github.com/Sharpiless/yolox-deepsort/ 最终效果: 运行demo: python demo

114 Dec 30, 2022
Research into Forex price prediction from price history using Deep Sequence Modeling with Stacked LSTMs.

Forex Data Prediction via Recurrent Neural Network Deep Sequence Modeling Research Paper Our research paper can be viewed here Installation Clone the

Alex Taradachuk 2 Aug 07, 2022
STMTrack: Template-free Visual Tracking with Space-time Memory Networks

STMTrack This is the official implementation of the paper: STMTrack: Template-free Visual Tracking with Space-time Memory Networks. Setup Prepare Anac

Zhihong Fu 62 Dec 21, 2022
Material del curso IIC2233 Programación Avanzada 📚

Contenidos Los contenidos se organizan según la semana del semestre en que nos encontremos, y según la semana que se destina para su estudio. Los cont

IIC2233 @ UC 72 Dec 23, 2022
PyTorch implementation for ACL 2021 paper "Maria: A Visual Experience Powered Conversational Agent".

Maria: A Visual Experience Powered Conversational Agent This repository is the Pytorch implementation of our paper "Maria: A Visual Experience Powered

Jokie 22 Dec 12, 2022
LieTransformer: Equivariant Self-Attention for Lie Groups

LieTransformer This repository contains the implementation of the LieTransformer used for experiments in the paper LieTransformer: Equivariant Self-At

OxCSML (Oxford Computational Statistics and Machine Learning) 50 Dec 28, 2022
This solves the autonomous driving issue which is supported by deep learning technology. Given a video, it splits into images and predicts the angle of turning for each frame.

Self Driving Car An autonomous car (also known as a driverless car, self-driving car, and robotic car) is a vehicle that is capable of sensing its env

Sagor Saha 4 Sep 04, 2021
[CoRL 21'] TANDEM: Tracking and Dense Mapping in Real-time using Deep Multi-view Stereo

TANDEM: Tracking and Dense Mapping in Real-time using Deep Multi-view Stereo Lukas Koestler1*    Nan Yang1,2*,†    Niclas Zeller2,3    Daniel Cremers1

TUM Computer Vision Group 744 Jan 04, 2023
Learning To Have An Ear For Face Super-Resolution

Learning To Have An Ear For Face Super-Resolution [Project Page] This repository contains demo code of our CVPR2020 paper. Training and evaluation on

50 Nov 16, 2022
An implementation of EWC with PyTorch

EWC.pytorch An implementation of Elastic Weight Consolidation (EWC), proposed in James Kirkpatrick et al. Overcoming catastrophic forgetting in neural

Ryuichiro Hataya 166 Dec 22, 2022
A Semantic Segmentation Network for Urban-Scale Building Footprint Extraction Using RGB Satellite Imagery

A Semantic Segmentation Network for Urban-Scale Building Footprint Extraction Using RGB Satellite Imagery This repository is the official implementati

Aatif Jiwani 42 Dec 08, 2022