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- Title
Enhancing Privacy-Preserving Intrusion Detection in Blockchain-Based Networks with Deep Learning.
- Authors
Li, Junzhou; Sun, Qianhui; Sun, Feixian
- Abstract
Data transfer in sensitive industries such as healthcare presents significant challenges due to privacy issues, which makes it difficult to collaborate and use machine learning effectively. These issues are explored in this study by looking at how hybrid learning approaches can be used to move models between users and consumers as well as within organizations. Blockchain technology is used, compensating participants with tokens, to provide privacy-preserving data collection and safe model transfer. The proposed approach combines Long Short-Term Memory (LSTM) and Gated Recurrent Units (GRU) to create a privacy-preserving secure framework for predictive analytics. LSTM-GRU-based federated learning techniques are used for local model training. The approach uses blockchain to securely transmit data to a distributed, decentralised cloud server, guaranteeing data confidentiality and privacy using a variety of storage techniques. This architecture addresses privacy issues and encourages seamless cooperation by utilising hybrid learning, federated learning, and blockchain technology. The study contributes to bridging the gap between secure data transfer and effective deep learning, specifically within sensitive domains. Experimental results demonstrate an impressive accuracy rate of 99.01%.
- Subjects
PRIVACY; INTRUSION detection systems (Computer security); BLOCKCHAINS; DEEP learning; BIT rate
- Publication
Data Science Journal, 2023, Vol 22, p1
- ISSN
1683-1470
- Publication type
Article
- DOI
10.5334/dsj-2023-031