Code To Tune or Not To Tune? Zero-shot Models for Legal Case Entailment.

Related tags

Deep Learningcoliee
Overview

COLIEE 2021 - task 2: Legal Case Entailment

This repository contains the code to reproduce NeuralMind's submissions to COLIEE 2021 presented in the paper To Tune or Not To Tune? Zero-shot Models for Legal Case Entailment. There has been mounting evidence that pretrained language models fine-tuned on large and diverse supervised datasets can transfer well to a variety of out-of-domain tasks. In this work, we investigate this transfer ability to the legal domain. For that, we participated in the legal case entailment task of COLIEE 2021, in which we use such models with no adaptations to the target domain. Our submissions achieved the highest scores, surpassing the second-best submission by more than six percentage points. Our experiments confirm a counter-intuitive result in the new paradigm of pretrained language models: that given limited labeled data, models with little or no adaption to the target task can be more robust to changes in the data distribution and perform better on held-out datasets than models fine-tuned on it.

Models

monoT5-zero-shot: We use a model T5 Large fine-tuned on MS MARCO, a dataset of approximately 530k query and relevant passage pairs. We use a checkpoint available at Huggingface’smodel hub that was trained with a learning rate of 10−3 using batches of 128 examples for 10k steps, or approximately one epoch of the MS MARCO dataset. In each batch, a roughly equal number of positive and negative examples are sampled.

monoT5: We further fine-tune monoT5-zero-shot on the COLIEE 2020 training set following a similar training procedure described for monoT5-zero-shot. The model is fine-tuned with a learning rate of 10−3 for 80 steps using batches of size 128, which corresponds to 20 epochs. Each batch has the same number of positive and negative examples.

DeBERTa: Decoding-enhanced BERT with disentangled attention(DeBERTa) improves on the original BERT and RoBERTa architectures by introducing two techniques: the disentangled attention mechanism and an enhanced mask decoder. Both improvements seek to introduce positional information to the pretraining procedure, both in terms of the absolute position of a token and the relative position between them. We fine-tune DeBERTa on the COLIEE 2020 training set following a similar training procedure described for monoT5.

DebertaT5 (Ensemble): We use the following method to combine the predictions of monoT5 and DeBERTa (both fine-tuned on COLIEE 2020 dataset): We concatenate the final set of paragraphs selected by each model and remove duplicates, preserving the highest score. It is important to note that our method does not combine scores between models. The final answer for each test example is composed of individual answers from one or both models. It ensures that only answers with a certain degree of confidence are maintained, which generally leads to an increase in precision.

Results

Model Train data Evaluation F1 Description
Median of submissions Coliee 58.60
Coliee 2nd best team Coliee 62.74
DeBERTa (ours) Coliee Coliee 63.39 Single model
monoT5 (ours) Coliee Coliee 66.10 Single model
monoT5-zero-shot (ours) MS Marco Coliee 68.72 Single model
DebertaT5 (ours) Coliee Coliee 69.12 Ensemble

In this table, we present the results. Our main finding is that our zero-shot model achieved the best result of a single model on 2021 test data, outperforming DeBERTa and monoT5, which were fine-tuned on the COLIEE dataset. As far as we know, this is the first time that a zero-shot model outperforms fine-tuned models in the task of legal case entailment. Given limited annotated data for fine-tuning and a held-out test data, such as the COLIEE dataset, our results suggest that a zero-shot model fine-tuned on a large out-of-domain dataset may be more robust to changes in data distribution and may generalize better on unseen data than models fine-tuned on a small domain-specific dataset. Moreover, our ensemble method effectively combines DeBERTa and monoT5 predictions,achieving the best score among all submissions (row 6). It is important to note that despite the performance of DebertaT5 being the best in the COLIEE competition, the ensemble method requires training time, computational resources and perhaps also data augmentation to perform well on the task, while monoT5-zero-shot does not need any adaptation. The model is available online and ready to use.

Conclusion

Based on those results, we question the common assumption that it is necessary to have labeled training data on the target domain to perform well on a task. Our results suggest that fine-tuning on a large labeled dataset may be enough.

How do I get the dataset?

Those who wish to use previous COLIEE data for a trial, please contact rabelo(at)ualberta.ca.

How do I evaluate?

As our best model is a zero-shot one, we provide only the evaluation script.

References

[1] Document Ranking with a Pretrained Sequence-to-Sequence Model

[2] DeBERTa: Decoding-enhanced BERT with Disentangled Attention

[3] ICAIL '21: Proceedings of the Eighteenth International Conference on Artificial Intelligence and Law

[4] Proceedings of the Eigth International Competition on Legal Information Extraction/Entailment

How do I cite this work?

 @article{to_tune,
    title={To Tune or Not To Tune? Zero-shot Models for Legal Case Entailment},
    author={Moraes, Guilherme and Rodrigues, Ruan and Lotufo, Roberto and Nogueira, Rodrigo},
    journal={ICAIL '21: Proceedings of the Eighteenth International Conference on Artificial Intelligence and Law June 2021 Pages 295–300},
    url={https://dl.acm.org/doi/10.1145/3462757.3466103},
    year={2021}
}
Owner
NeuralMind
Deep Learning for NLP and image processing
NeuralMind
TorchMultimodal is a PyTorch library for training state-of-the-art multimodal multi-task models at scale.

TorchMultimodal (Alpha Release) Introduction TorchMultimodal is a PyTorch library for training state-of-the-art multimodal multi-task models at scale.

Meta Research 663 Jan 06, 2023
Over-the-Air Ensemble Inference with Model Privacy

Over-the-Air Ensemble Inference with Model Privacy This repository contains simulations for our private ensemble inference method. Installation Instal

Selim Firat Yilmaz 1 Jun 29, 2022
PIXIE: Collaborative Regression of Expressive Bodies

PIXIE: Collaborative Regression of Expressive Bodies [Project Page] This is the official Pytorch implementation of PIXIE. PIXIE reconstructs an expres

Yao Feng 331 Jan 04, 2023
Accommodating supervised learning algorithms for the historical prices of the world's favorite cryptocurrency and boosting it through LightGBM.

Accommodating supervised learning algorithms for the historical prices of the world's favorite cryptocurrency and boosting it through LightGBM.

1 Nov 27, 2021
Conformer: Local Features Coupling Global Representations for Visual Recognition

Conformer: Local Features Coupling Global Representations for Visual Recognition (arxiv) This repository is built upon DeiT and timm Usage First, inst

Zhiliang Peng 378 Jan 08, 2023
Autonomous Ground Vehicle Navigation and Control Simulation Examples in Python

Autonomous Ground Vehicle Navigation and Control Simulation Examples in Python THIS PROJECT IS CURRENTLY A WORK IN PROGRESS AND THUS THIS REPOSITORY I

Joshua Marshall 14 Dec 31, 2022
Company clustering with K-means/GMM and visualization with PCA, t-SNE, using SSAN relation extraction

RE results graph visualization and company clustering Installation pip install -r requirements.txt python -m nltk.downloader stopwords python3.7 main.

Jieun Han 1 Oct 06, 2022
Deep Learning with PyTorch made easy 🚀 !

Deep Learning with PyTorch made easy 🚀 ! Carefree? carefree-learn aims to provide CAREFREE usages for both users and developers. It also provides a c

381 Dec 22, 2022
[CVPR 2021] Rethinking Text Segmentation: A Novel Dataset and A Text-Specific Refinement Approach

Rethinking Text Segmentation: A Novel Dataset and A Text-Specific Refinement Approach This is the repo to host the dataset TextSeg and code for TexRNe

SHI Lab 174 Dec 19, 2022
Real-Time Multi-Contact Model Predictive Control via ADMM

Here, you can find the code for the paper 'Real-Time Multi-Contact Model Predictive Control via ADMM'. Code is currently being cleared up and optimize

17 Dec 28, 2022
Learning to Identify Top Elo Ratings with A Dueling Bandits Approach

Learning to Identify Top Elo Ratings We propose two algorithms MaxIn-Elo and MaxIn-mElo to solve the top players identification on the transitive and

2 Jan 14, 2022
SpineAI Bilsky Grading With Python

SpineAI-Bilsky-Grading SpineAI Paper with Code 📫 Contact Address correspondence to J.T.P.D.H. (e-mail: james_hallinan AT nuhs.edu.sg) Disclaimer This

<a href=[email protected]"> 2 Dec 16, 2021
Minimalistic PyTorch training loop

Backbone for PyTorch training loop Will try to keep it minimalistic. pip install back from back import Bone Features Progress bar Checkpoints saving/l

Kashin 4 Jan 16, 2020
A script helps the user to update Linux and Mac systems through the terminal

Description This script helps the user to update Linux and Mac systems through the terminal. All the user has to install some requirements and then ru

Roxcoder 2 Jan 23, 2022
A toolkit for controlling Euro Truck Simulator 2 with python to develop self-driving algorithms.

europilot Overview Europilot is an open source project that leverages the popular Euro Truck Simulator(ETS2) to develop self-driving algorithms. A con

1.4k Jan 04, 2023
Differentiable simulation for system identification and visuomotor control

gradsim gradSim: Differentiable simulation for system identification and visuomotor control gradSim is a unified differentiable rendering and multiphy

105 Dec 18, 2022
[CVPR21] LightTrack: Finding Lightweight Neural Network for Object Tracking via One-Shot Architecture Search

LightTrack: Finding Lightweight Neural Networks for Object Tracking via One-Shot Architecture Search The official implementation of the paper LightTra

Multimedia Research 290 Dec 24, 2022
Sign Language Transformers (CVPR'20)

Sign Language Transformers (CVPR'20) This repo contains the training and evaluation code for the paper Sign Language Transformers: Sign Language Trans

Necati Cihan Camgoz 164 Dec 30, 2022
PyTorch implementation of Neural Dual Contouring.

NDC PyTorch implementation of Neural Dual Contouring. Citation We are still writing the paper while adding more improvements and applications. If you

Zhiqin Chen 140 Dec 26, 2022
A minimal yet resourceful implementation of diffusion models (along with pretrained models + synthetic images for nine datasets)

A minimal yet resourceful implementation of diffusion models (along with pretrained models + synthetic images for nine datasets)

Vikash Sehwag 65 Dec 19, 2022