Visible to the public Fake News Detection using a Decentralized Deep Learning Model and Federated Learning

TitleFake News Detection using a Decentralized Deep Learning Model and Federated Learning
Publication TypeConference Paper
Year of Publication2022
AuthorsJayakody, Nirosh, Mohammad, Azeem, Halgamuge, Malka N.
Conference NameIECON 2022 – 48th Annual Conference of the IEEE Industrial Electronics Society
Date Publishedoct
KeywordsAdaptation models, CNN, Decentralized Deep Learning, Deep Learning, DeepFake, fake news detection, federated learning, Human Behavior, Metrics, pubcrawl, resilience, Resiliency, Scalability, social networking (online), Soft sensors, Training, Training data
Abstract

Social media has beneficial and detrimental impacts on social life. The vast distribution of false information on social media has become a worldwide threat. As a result, the Fake News Detection System in Social Networks has risen in popularity and is now considered an emerging research area. A centralized training technique makes it difficult to build a generalized model by adapting numerous data sources. In this study, we develop a decentralized Deep Learning model using Federated Learning (FL) for fake news detection. We utilize an ISOT fake news dataset gathered from "Reuters.com" (N = 44,898) to train the deep learning model. The performance of decentralized and centralized models is then assessed using accuracy, precision, recall, and F1-score measures. In addition, performance was measured by varying the number of FL clients. We identify the high accuracy of our proposed decentralized FL technique (accuracy, 99.6%) utilizing fewer communication rounds than in previous studies, even without employing pre-trained word embedding. The highest effects are obtained when we compare our model to three earlier research. Instead of a centralized method for false news detection, the FL technique may be used more efficiently. The use of Blockchain-like technologies can improve the integrity and validity of news sources.

Notes

ISSN: 2577-1647

DOI10.1109/IECON49645.2022.9968358
Citation Keyjayakody_fake_2022