Résumé:
Smishing, a form of social engineering attack involving fraudulent SMS messages, has
become a major cybersecurity issue in mobile communications. In this study, we propose
a new smishing detection method based on federated learning, a decentralized learning
technique that preserves privacy. Using deep learning algorithms including LSTM, BiLSTM,
CNN and MLP, we build a robust smishing detection model in a federated learning
framework.
Experiments show that the federated learning method using CNN achieves an accuracy
of 92.38 %, demonstrating the efficacy of federated learning in solving the challenges of
smishing detection while preserving data confidentiality. The proposed method offers a
solution to smishing attacks, and paves the way for future research into privacy-preserving
mobile security.