ARCHIVES

Original Article

Multimodal Fake News Detection Using Deep Learning Methods

Vishal Tiwari1Preeti Panjwani2Reenit Shelare3Nibodh Shide4Sarthak Raut5

¹²³⁴⁵ Department of Information Technology, St. Vincent Pallotti College of Engineering and Technology, Nagpur, Maharashtra, India.

Published Online: March-April 2025

Pages: 165-169

Abstract

View PDF

Digital platforms have created such a strong presence of fake news that it became challenging to recognize what genuinely happened from fabricated content. A deep learning based multimodal fake news detection system examines news content through text and images according to this research. The model depends on LSTM networks together with a CNN network for processing text content and imaging information respectively. The system achieves better understanding of news articles through mutual strengths between textual and visual content analysis. The combination of different data types through this method leads to better detection accuracy according to our experimental results.

Related Articles

2025

Brain Tumor Detection

2025

Deep Meme Automated Image Text Meme Production Via Convolutional Neural Networks

2025

Insurance Cost Prediction Using Polynomial Ridge Regression and Random Forest Classifier

2025

Car Wash System Using PLC

2025

AI Driven Data Breach Detection

2025

Sign Language Recognition Using Convolutional Neural Networks and Vgg19

2025

Reduction of Foam in Sewage Treatment Plant by Using Pervious Concrete

2025

Brain Hemorrhage Detection Using Convolutional Neural Networks (CNNs)

2025

Medical Insurance Cost Prediction Using Machine Learning

2025

Moving Target Defence Against Internet Denial of Service Attacks

Multimodal Fake News Detection Using Deep Learning Methods | IJIRE