LTR_CrossEncoder: Legal Text Retrieval Zalo AI Challenge 2021

Overview

LTR_CrossEncoder: Legal Text Retrieval Zalo AI Challenge 2021

We propose a cross encoder model (LTR_CrossEncoder) for information retrieval, re-retrieval text relevant base on result of elasticsearch

  • Model achieved 0.747 F2 score in public test (Legal Text Retrieval Zalo AI Challenge 2021)
  • If using elasticsearch only, our F2 score is 0.54

Algorithm design

Our algorithm includes two key components:

  • Elasticsearch
  • Cross Encoder Model

Elasticsearch

Elasticsearch is used for filtering top-k most relevant articles based on BM25 score.

Cross Encoder Model

model

Our model accepts query, article text (passage) and article title as inputs and outputs a relevant score of that query and that article. Higher score, more relavant. We use pretrained vinai/phobert-base and CrossEntropyLoss or BCELoss as loss function

Train dataset

Non-relevant samples in dataset are obtained by top-10 result of elasticsearch, the training data (train_data_model.json) has format as follow:

[
    {
        "question_id": "..."
        "question": "..."
        "relevant_articles":[
            {
                "law_id": "..."
                "article_id": "..."
                "title": "..."
                "text": "..."
            },
            ...
        ]
        "non_relevant_articles":[
            {
                "law_id": "..."
                "article_id": "..."
                "title": "..."
                "text": "..."
            },
            ...
        ]
    },
    ...
]

Test dataset

First we use elasticsearch to obtain k relevant candidates (k=top-50 result of elasticsearch), then LTR_CrossEncoder classify which actual relevant article. The test data (test_data_model.json) has format as follow:

[
    {
        "question_id": "..."
        "question": "..."
        "articles":[
            {
                "law_id": "..."
                "article_id": "..."
                "title": "..."
                "text": "..."
            },
            ...
        ]
    },
    ...
]

Training

Run the following bash file to train model:

bash run_phobert.sh

Inference

We also provide model checkpoints. Please download these checkpoints if you want to make inference on a new text file without training the models from scratch. Create new checkpoint folder, unzip model file and push it in checkpoint folder. https://drive.google.com/file/d/1oT8nlDIAatx3XONN1n5eOgYTT6Lx_h_C/view?usp=sharing

Run the following bash file to infer test dataset:

bash run_predict.sh
Owner
Xuan Hieu Duong
Xuan Hieu Duong
Sarus implementation of classical ML models. The models are implemented using the Keras API of tensorflow 2. Vizualization are implemented and can be seen in tensorboard.

Sarus published models Sarus implementation of classical ML models. The models are implemented using the Keras API of tensorflow 2. Vizualization are

Sarus Technologies 39 Aug 19, 2022
Code for CVPR2021 paper "Learning Salient Boundary Feature for Anchor-free Temporal Action Localization"

AFSD: Learning Salient Boundary Feature for Anchor-free Temporal Action Localization This is an official implementation in PyTorch of AFSD. Our paper

Tencent YouTu Research 146 Dec 24, 2022
Sequence to Sequence Models with PyTorch

Sequence to Sequence models with PyTorch This repository contains implementations of Sequence to Sequence (Seq2Seq) models in PyTorch At present it ha

Sandeep Subramanian 708 Dec 19, 2022
Official Tensorflow implementation of "M-LSD: Towards Light-weight and Real-time Line Segment Detection"

M-LSD: Towards Light-weight and Real-time Line Segment Detection Official Tensorflow implementation of "M-LSD: Towards Light-weight and Real-time Line

NAVER/LINE Vision 357 Jan 04, 2023
All the code and files related to the MI-Lab of UE19CS305 course in sem 5

Machine-Intelligence-Lab-CS305 The compilation of all the code an drelated files from MI-Lab UE19CS305 (of batch 2019-2023) offered by PES University

Arvind Krishna 3 Nov 10, 2022
Catalyst.Detection

Accelerated DL R&D PyTorch framework for Deep Learning research and development. It was developed with a focus on reproducibility, fast experimentatio

Catalyst-Team 12 Oct 25, 2021
A general-purpose encoder-decoder framework for Tensorflow

READ THE DOCUMENTATION CONTRIBUTING A general-purpose encoder-decoder framework for Tensorflow that can be used for Machine Translation, Text Summariz

Google 5.5k Jan 07, 2023
CoANet: Connectivity Attention Network for Road Extraction From Satellite Imagery

CoANet: Connectivity Attention Network for Road Extraction From Satellite Imagery This paper (CoANet) has been published in IEEE TIP 2021. This code i

Jie Mei 53 Dec 03, 2022
Code that accompanies the paper Semi-supervised Deep Kernel Learning: Regression with Unlabeled Data by Minimizing Predictive Variance

Semi-supervised Deep Kernel Learning This is the code that accompanies the paper Semi-supervised Deep Kernel Learning: Regression with Unlabeled Data

58 Oct 26, 2022
Markov Attention Models

Introduction This repo contains code for reproducing the results in the paper Graphical Models with Attention for Context-Specific Independence and an

Vicarious 0 Dec 09, 2021
thundernet ncnn

MMDetection_Lite 基于mmdetection 实现一些轻量级检测模型,安装方式和mmdeteciton相同 voc0712 voc 0712训练 voc2007测试 coco预训练 thundernet_voc_shufflenetv2_1.5 input shape mAP 320

DayBreak 39 Dec 05, 2022
[CVPR 2021 Oral] ForgeryNet: A Versatile Benchmark for Comprehensive Forgery Analysis

ForgeryNet: A Versatile Benchmark for Comprehensive Forgery Analysis ForgeryNet: A Versatile Benchmark for Comprehensive Forgery Analysis [arxiv|pdf|v

Yinan He 78 Dec 22, 2022
Sinkformers: Transformers with Doubly Stochastic Attention

Code for the paper : "Sinkformers: Transformers with Doubly Stochastic Attention" Paper You will find our paper here. Compat This package has been dev

Michael E. Sander 31 Dec 29, 2022
Mae segmentation - Reproduction of semantic segmentation using masked autoencoder (mae)

ADE20k Semantic segmentation with MAE Getting started Install the mmsegmentation

97 Dec 17, 2022
Official pytorch implementation of "DSPoint: Dual-scale Point Cloud Recognition with High-frequency Fusion"

DSPoint Official pytorch implementation of "DSPoint: Dual-scale Point Cloud Recognition with High-frequency Fusion" Coming soon, as soon as I finish a

Ziyao Zeng 14 Feb 26, 2022
Code for the paper "Implicit Representations of Meaning in Neural Language Models"

Implicit Representations of Meaning in Neural Language Models Preliminaries Create and set up a conda environment as follows: conda create -n state-pr

Belinda Li 39 Nov 03, 2022
Unofficial implementation of the paper: PonderNet: Learning to Ponder in TensorFlow

PonderNet-TensorFlow This is an Unofficial Implementation of the paper: PonderNet: Learning to Ponder in TensorFlow. Official PyTorch Implementation:

1 Oct 23, 2022
Deep Learning applied to Integral data analysis

DeepIntegralCompton Deep Learning applied to Integral data analysis Module installation Move to the root directory of the project and execute : pip in

Thomas Vuillaume 1 Dec 10, 2021
Evolution Strategies in PyTorch

Evolution Strategies This is a PyTorch implementation of Evolution Strategies. Requirements Python 3.5, PyTorch = 0.2.0, numpy, gym, universe, cv2 Wh

Andrew Gambardella 333 Nov 14, 2022
The repository for our EMNLP 2021 paper "Finnish Dialect Identification: The Effect of Audio and Text"

Finnish Dialect Identification The repository for our EMNLP 2021 paper "Finnish Dialect Identification: The Effect of Audio and Text". We present a te

Rootroo Ltd 2 Dec 25, 2021