Fake News Detection using a Decentralized Deep Learning Model and Federated Learning
Title | Fake News Detection using a Decentralized Deep Learning Model and Federated Learning |
Publication Type | Conference Paper |
Year of Publication | 2022 |
Authors | Jayakody, Nirosh, Mohammad, Azeem, Halgamuge, Malka N. |
Conference Name | IECON 2022 – 48th Annual Conference of the IEEE Industrial Electronics Society |
Date Published | oct |
Keywords | Adaptation 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 |
DOI | 10.1109/IECON49645.2022.9968358 |
Citation Key | jayakody_fake_2022 |