SPAM: An Enhanced Performance of Security and Privacy-Aware Model over Split Learning in Consumer Electronics
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| Publicado en: | Programming and Computer Software vol. 50, no. 8 (Dec 2024), p. 875 |
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| Publicado: |
Springer Nature B.V.
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| Materias: | |
| Acceso en línea: | Citation/Abstract Full Text Full Text - PDF |
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| Resumen: | The use of consumer electronics has grown drastically in recent times due to advancements in technology. It has resulted in users expecting privacy and security from data shared over these devices. Split learning has become a widespread technique in providing these assurances. It is necessary to extend it further. That resulted in a model where the traditional approach has more performance resources and a more security-aware/privacy-aware alternative. This superior performance is explained by the fact that It has a more detailed implementation than the split learning approach. Provides data leak prevention to meet different use cases, including (but not limited to) the ability to protect data at rest, in motion, and while in use. Therefore, it can enhance transaction speed and latency over split learning. The security and privacy-aware view helps the user by providing options to secure his data while the prevention relationship improves usability. It can also lead to greater data type flexibility in networks. SPAM crawled results in proposed 0.05135 FDR, where Pth: 1 results with fdr > This caused the programmable security and privacy-aware model to far outstrip Split learning in terms of performance, making it a good candidate for encrypting consumer electronics-transmitted data. It provides a secure, responsive means for users to exchange information while at the same time promising that user privacy is well considered. |
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| ISSN: | 0361-7688 1608-3261 |
| DOI: | 10.1134/S0361768824700816 |
| Fuente: | Advanced Technologies & Aerospace Database |