A hybrid rumor detection model derived from a comparative study of supervised approaches
Abstract
In the current age of social media, information spreads like wildfire. Unfortunately,
this also means that misinformation or rumors can spread easily. The spread of this
misinformation can have negative consequences for society. This is especially true in
recent years due to growing engagement in social media platforms for news. Hence,
to prevent the spread of rumors, rumor detection is necessary. Bangladesh has
been no exception to the spread of misinformation, causing countless propaganda
over the years. Although a significant amount of work has already been conducted
regarding rumor detection in English, Bangla rumor detection is still in its infancy.
For our research, we first compared several Machine Learning (ML) models and Deep
Learning (DL) models for rumor detection using both Bangla and English datasets.
Comparing and analyzing the results, we implemented an Ensemble ML model and
finally our hybrid model, which is a combination of our best-performing ML model
and DL model that outperformed all other baseline state-of-the-art models.