Author
Listed:
- Venkatagurunatham Naidu Kollu
(Department of Computer Science and Engineering, Dr.M.G.R. Educational and Research Institute, Chennai 600095, India)
- Vijayaraj Janarthanan
(Department of Artificial Intelligence and Data Science, Easwari Engineering College, Ramapuram, Chennai 600089, India)
- Muthulakshmi Karupusamy
(Department of Information Technology, PanimalarEngineering College, Poonamallee, Chennai 600123, India)
- Manikandan Ramachandran
(School of Computing, SASTRA Deemed University, Thanjavur 613401, India)
Abstract
Data sharing is proposed because the issue of data islands hinders advancement of artificial intelligence technology in the 5G era. Sharing high-quality data has a direct impact on how well machine-learning models work, but there will always be misuse and leakage of data. The field of financial technology, or FinTech, has received a lot of attention and is growing quickly. This field has seen the introduction of new terms as a result of its ongoing expansion. One example of such terminology is “FinTech”. This term is used to describe a variety of procedures utilized frequently in the financial technology industry. This study aims to create a cloud-based intrusion detection system based on IoT federated learning architecture as well as smart contract analysis. This study proposes a novel method for detecting intrusions using a cyber-threat federated graphical authentication system and cloud-based smart contracts in FinTech data. Users are required to create a route on a world map as their credentials under this scheme. We had 120 people participate in the evaluation, 60 of whom had a background in finance or FinTech. The simulation was then carried out in Python using a variety of FinTech cyber-attack datasets for accuracy, precision, recall, F-measure, AUC (Area under the ROC Curve), trust value, scalability, and integrity. The proposed technique attained accuracy of 95%, precision of 85%, RMSE of 59%, recall of 68%, F-measure of 83%, AUC of 79%, trust value of 65%, scalability of 91%, and integrity of 83%.
Suggested Citation
Venkatagurunatham Naidu Kollu & Vijayaraj Janarthanan & Muthulakshmi Karupusamy & Manikandan Ramachandran, 2023.
"Cloud-Based Smart Contract Analysis in FinTech Using IoT-Integrated Federated Learning in Intrusion Detection,"
Data, MDPI, vol. 8(5), pages 1-21, April.
Handle:
RePEc:gam:jdataj:v:8:y:2023:i:5:p:83-:d:1136822
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