With the rapid spread of fake news on social media platforms, it has become essential to develop effective detection mechanisms that overcome the limitations of content-only or propagation-only approaches. This study aims to design a unified framework that jointly models textual semantics and diffusion characteristics for improved misinformation detection. To achieve this, we propose GRAFT-FND, a Graph-Aware Recurrent Fusion Deep Ensemble architecture that integrates contextual word embeddings (Word2Vec, BERT, and BERTweet) with recurrent neural networks (RNN/GRU/LSTM/BiLSTM) and graph-based node embedding methods (Node2Vec and DeepWalk) within a fusion-aware learning module. Extensive experiments conducted on the Twitter15 and Twitter16 benchmark datasets using 10-fold cross-validation demonstrate that the proposed framework consistently outperforms baseline and recent state-of-the-art models, with the fusion mechanism and propagation-aware representations contributing significantly to performance improvement. The results indicate that jointly modelling semantic and structural information enhances the ability to capture complex misinformation patterns and improves generalisation across datasets. In conclusion, the proposed framework provides a robust and scalable solution for fake news detection in social media environments. Future work is recommended to investigate adversarial robustness, real-time deployment, and the integration of multimodal data sources.
Karrar Kanaan (Sun,) studied this question.