GraphNLI: A Graph-based Natural Language Inference Model for Polarity Prediction in Online Debates

Overview

GraphNLI: A Graph-based Natural Language Inference Model for Polarity Prediction in Online Debates

Vibhor Agarwal, Sagar Joglekar, Anthony P. Young and Nishanth Sastry, "GraphNLI: A Graph-based Natural Language Inference Model for Polarity Prediction in Online Debates", The ACM Web Conference (TheWebConf), 2022.

Abstract

An online forum that allows participatory engagement between users, very often, becomes a stage for heated debates. These debates sometimes escalate into full blown exchanges of hate and misinformation. As such, modeling these conversations through the lens of argumentation theory as graphs of supports and attacks has shown promise, especially in identifying which claims should be accepted. However, the argumentative relation of supports and attacks, also called the polarity, is difficult to infer from natural language exchanges, not least because support or attack relationship in natural language is intuitively contextual.

Various deep learning models have been used to classify the polarity, where the inputs to the model are typically just the texts of the replying argument and the argument being replied to. We propose GraphNLI, a novel graph-based deep learning architecture to infer argumentative relations, which not only considers the immediate pair of arguments involved in the response, but also the surrounding arguments, hence capturing the context of the discussion, through graph walks. We demonstrate the performance of this model on a curated debate dataset from Kialo, an online debating platform. Our model outperforms the relevant baselines with an overall accuracy of 83%, which demonstrates that incorporating nearby arguments in addition to the pair of relayed arguments helps in predicting argumentative relations in online debates.

The paper PDF will be available soon!

Directory Structure

  • GraphNLI folder contains the implementation of Graph Walks and GraphNLI model.
  • Baselines folder contains the implementation of all the four baselines in the paper.

Citation

If you find this paper useful in your research, please consider citing:

@inproceedings{agarwal2022graphnli,
  title={GraphNLI: A Graph-based Natural Language Inference Model for Polarity Prediction in Online Debates},
  author={Vibhor Agarwal and Sagar Joglekar and Anthony P. Young and Nishanth Sastry},
  booktitle={The ACM Web Conference (TheWebConf)},
  year={2022}
}
Owner
Vibhor Agarwal
PhD Researcher @University-of-Surrey | Ex-SRE @media.net | GSoC' 18 @oppia | NLP | Graph Machine Learning | Computational Social Science
Vibhor Agarwal
BERT, LDA, and TFIDF based keyword extraction in Python

BERT, LDA, and TFIDF based keyword extraction in Python kwx is a toolkit for multilingual keyword extraction based on Google's BERT and Latent Dirichl

Andrew Tavis McAllister 41 Dec 27, 2022
NLP-based analysis of poor Chinese movie reviews on Douban

douban_embedding 豆瓣中文影评差评分析 1. NLP NLP(Natural Language Processing)是指自然语言处理,他的目的是让计算机可以听懂人话。 下面是我将2万条豆瓣影评训练之后,随意输入一段新影评交给神经网络,最终AI推断出的结果。 "很好,演技不错

3 Apr 15, 2022
Ελληνικά νέα (Python script) / Greek News Feed (Python script)

Ελληνικά νέα (Python script) / Greek News Feed (Python script) Ελληνικά English Το 2017 είχα υλοποιήσει ένα Python script για να εμφανίζει τα τωρινά ν

Loren Kociko 1 Jun 14, 2022
This repository contains data used in the NAACL 2021 Paper - Proteno: Text Normalization with Limited Data for Fast Deployment in Text to Speech Systems

Proteno This is the data release associated with the corresponding NAACL 2021 Paper - Proteno: Text Normalization with Limited Data for Fast Deploymen

37 Dec 04, 2022
Simple program that translates the name of files into English

Simple program that translates the name of files into English. Useful for when editing/inspecting programs that were developed in a foreign language.

0 Dec 22, 2021
Finding Label and Model Errors in Perception Data With Learned Observation Assertions

Finding Label and Model Errors in Perception Data With Learned Observation Assertions This is the project page for Finding Label and Model Errors in P

Stanford Future Data Systems 17 Oct 14, 2022
A raytrace framework using taichi language

ti-raytrace The code use Taichi programming language Current implement acceleration lvbh disney brdf How to run First config your anaconda workspace,

蕉太狼 73 Dec 11, 2022
Scene Text Retrieval via Joint Text Detection and Similarity Learning

This is the code of "Scene Text Retrieval via Joint Text Detection and Similarity Learning". For more details, please refer to our CVPR2021 paper.

79 Nov 29, 2022
Label data using HuggingFace's transformers and automatically get a prediction service

Label Studio for Hugging Face's Transformers Website • Docs • Twitter • Join Slack Community Transfer learning for NLP models by annotating your textu

Heartex 135 Dec 29, 2022
Finally, some decent sample sentences

tts-dataset-prompts This repository aims to be a decent set of sentences for people looking to clone their own voices (e.g. using Tacotron 2). Each se

hecko 19 Dec 13, 2022
BiNE: Bipartite Network Embedding

BiNE: Bipartite Network Embedding This repository contains the demo code of the paper: BiNE: Bipartite Network Embedding. Ming Gao, Leihui Chen, Xiang

leihuichen 214 Nov 24, 2022
Conversational-AI-ChatBot - Intelligent ChatBot built with Microsoft's DialoGPT transformer to make conversations with human users!

Conversational AI ChatBot Intelligent ChatBot built with Microsoft's DialoGPT transformer to make conversations with human users! In this project? Thi

Rajkumar Lakshmanamoorthy 6 Nov 30, 2022
simpleT5 is built on top of PyTorch-lightning⚡️ and Transformers🤗 that lets you quickly train your T5 models.

Quickly train T5 models in just 3 lines of code + ONNX support simpleT5 is built on top of PyTorch-lightning ⚡️ and Transformers 🤗 that lets you quic

Shivanand Roy 220 Dec 30, 2022
Deeply Supervised, Layer-wise Prediction-aware (DSLP) Transformer for Non-autoregressive Neural Machine Translation

Non-Autoregressive Translation with Layer-Wise Prediction and Deep Supervision Training Efficiency We show the training efficiency of our DSLP model b

Chenyang Huang 37 Jan 04, 2023
The official implementation of "BERT is to NLP what AlexNet is to CV: Can Pre-Trained Language Models Identify Analogies?, ACL 2021 main conference"

BERT is to NLP what AlexNet is to CV This is the official implementation of BERT is to NLP what AlexNet is to CV: Can Pre-Trained Language Models Iden

Asahi Ushio 20 Nov 03, 2022
Official codebase for Can Wikipedia Help Offline Reinforcement Learning?

Official codebase for Can Wikipedia Help Offline Reinforcement Learning?

Machel Reid 82 Dec 19, 2022
Revisiting Pre-trained Models for Chinese Natural Language Processing (Findings of EMNLP 2020)

This repository contains the resources in our paper "Revisiting Pre-trained Models for Chinese Natural Language Processing", which will be published i

Yiming Cui 463 Dec 30, 2022
Module for automatic summarization of text documents and HTML pages.

Automatic text summarizer Simple library and command line utility for extracting summary from HTML pages or plain texts. The package also contains sim

Mišo Belica 3k Jan 08, 2023
Beautiful visualizations of how language differs among document types.

Scattertext 0.1.0.0 A tool for finding distinguishing terms in corpora and displaying them in an interactive HTML scatter plot. Points corresponding t

Jason S. Kessler 2k Dec 27, 2022
An algorithm that can solve the word puzzle Wordle with an optimal number of guesses on HARD mode.

WordleSolver An algorithm that can solve the word puzzle Wordle with an optimal number of guesses on HARD mode. How to use the program Copy this proje

Akil Selvan Rajendra Janarthanan 3 Mar 02, 2022