AI Based Fake News Detection Using Natural Language Processing (NLP)
AI Based Fake News Detection Using Natural Language Processing (NLP)
Authors:
Tanmay Akre, Bushra Shaha, Vansh Tarone, Sameer Meshram, Abhinav Pal, Sachin Pandit
Department of Computer Science and Engineering (Cyber Security)
G.H. Raisoni College Of Engineering And Management, Nagpur Hingna-Wadi MIDC Road, Nagpur, India
{tanmay.akre.cyb@ghrietn.raisoni.net, bushra.shaha.cyb@ghrietn.raisoni.net, sachin.pandit.cyb@ghrietn.raisoni.net,}
Abstract—The rapid spread of fake news across digital plat-forms poses significant challenges to information reliability and public trust. To address this issue, this paper proposes a hybrid fake news detection framework that integrates statistical feature extraction techniques with transformer-based contextual repre-sentations. The proposed system combines TF-IDF features with BERT embeddings and employs a dual-stage classification strat-egy to achieve a balance between computational efficiency and classification accuracy. The framework processes textual data through preprocessing, feature extraction, and classification stages within a unified architecture. Experimental evaluation on a benchmark dataset demonstrates that the hybrid approach outperforms traditional machine learning and standalone deep learning models in terms of precision, recall, and F1-score. The results highlight the effectiveness of combining statistical and semantic representations for improving fake news detection in real-world scenarios. This work contributes to the development of scalable and efficient AI-based solutions for combating misinformation.
Keywords: Fake news detection, Natural Language Pro-cessing, Hybrid model, Transformer models, BERT, Machine learning, Misinformation