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

02/16/2022
by   Vibhor Agarwal, et al.
0

Online forums that allow participatory engagement between users have been transformative for public discussion of important issues. However, debates on such forums can sometimes escalate into full blown exchanges of hate or misinformation. An important tool in understanding and tackling such problems is to be able to infer the argumentative relation of whether a reply is supporting or attacking the post it is replying to. This so called polarity prediction task is difficult because replies may be based on external context beyond a post and the reply whose polarity is being predicted. We propose GraphNLI, a novel graph-based deep learning architecture that uses graph walk techniques to capture the wider context of a discussion thread in a principled fashion. Specifically, we propose methods to perform root-seeking graph walks that start from a post and captures its surrounding context to generate additional embeddings for the post. We then use these embeddings to predict the polarity relation between a reply and the post it is replying to. We evaluate the performance of our models on a curated debate dataset from Kialo, an online debating platform. Our model outperforms relevant baselines, including S-BERT, with an overall accuracy of 83

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/16/2022

A Graph-Based Context-Aware Model to Understand Online Conversations

Online forums that allow for participatory engagement between users have...
research
05/26/2019

When to reply? Context Sensitive Models to Predict Instructor Interventions in MOOC Forums

Due to time constraints, course instructors often need to selectively pa...
research
07/07/2021

POSLAN: Disentangling Chat with Positional and Language encoded Post Embeddings

Most online message threads inherently will be cluttered and any new use...
research
08/10/2019

Modeling Engagement Dynamics of Online Discussions using Relativistic Gravitational Theory

Online discussions are valuable resources to study user behaviour on a d...
research
02/19/2019

A Walk-based Model on Entity Graphs for Relation Extraction

We present a novel graph-based neural network model for relation extract...
research
04/22/2020

R-VGAE: Relational-variational Graph Autoencoder for Unsupervised Prerequisite Chain Learning

The task of concept prerequisite chain learning is to automatically dete...
research
01/17/2023

Follow Us and Become Famous! Insights and Guidelines From Instagram Engagement Mechanisms

With 1.3 billion users, Instagram (IG) has also become a business tool. ...

Please sign up or login with your details

Forgot password? Click here to reset