Unlocking Bias Detection: Leveraging Transformer-Based Models for Content Analysis
Abstract
Bias detection in text is crucial for combating the spread of negative stereotypes, misinformation, and biased decision-making. Traditional language models frequently face challenges in generalizing beyond their training data and are typically designed for a single task, often focusing on bias detection at the sentence level. To address this, we present the Contextualized Bi-Directional Dual Transformer (CBDT) \textcolor{green}{\faLeaf} classifier. This model combines two complementary transformer networks: the Context Transformer and the Entity Transformer, with a focus on improving bias detection capabilities. We have prepared a dataset specifically for training these models to identify and locate biases in texts. Our evaluations across various datasets demonstrate CBDT \textcolor{green} effectiveness in distinguishing biased narratives from neutral ones and identifying specific biased terms. This work paves the way for applying the CBDT \textcolor{green} model in various linguistic and cultural contexts, enhancing its utility in bias detection efforts. We also make the annotated dataset available for research purposes.
Cite
@article{arxiv.2310.00347,
title = {Unlocking Bias Detection: Leveraging Transformer-Based Models for Content Analysis},
author = {Shaina Raza and Oluwanifemi Bamgbose and Veronica Chatrath and Shardul Ghuge and Yan Sidyakin and Abdullah Y Muaad},
journal= {arXiv preprint arXiv:2310.00347},
year = {2024}
}
Comments
Accepted in IEEE Transactions on Computational Social Systems