2024
DOI: 10.1109/tetc.2023.3244174
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Preserving Differential Privacy in Deep Learning Based on Feature Relevance Region Segmentation

Abstract: In the era of big data, deep learning techniques provide intelligent solutions for various problems in real-life scenarios. However, deep neural networks depend on large-scale datasets including sensitive data, which causes the potential risk of privacy leakage. In addition, various constantly evolving attack methods are also threatening the data security in deep learning models. Protecting data privacy effectively at a lower cost has become an urgent challenge. This paper proposes an Adaptive Feature Relevanc… Show more

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