Sixth International Conference on Advanced Electronic Materials, Computers, and Software Engineering (AEMCSE 2023) 2023
DOI: 10.1117/12.3005035
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Privacy preservation for federated learning based on Gaussian noise scrambling

Abstract: This article discusses a privacy preservation for federated learning based on gaussian noise scrambling. The main objective of this model is to protect user data privacy and security by aggregating model parameters from multiple parties instead of raw data sets. However, attackers may still obtain sensitive information from the model parameter information transmitted during federated learning training through certain means. To address this issue, we propose a differential privacy noise addition scheme for fede… Show more

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