2023
DOI: 10.3390/app132413146
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Enhancing Privacy in Large Language Model with Homomorphic Encryption and Sparse Attention

Lexin Zhang,
Changxiang Li,
Qi Hu
et al.

Abstract: In response to the challenges of personal privacy protection in the dialogue models of the information era, this study introduces an innovative privacy-preserving dialogue model framework. This framework seamlessly incorporates Fully Homomorphic Encryption (FHE) technology with dynamic sparse attention (DSA) mechanisms, aiming to enhance the response efficiency and accuracy of dialogue systems without compromising user privacy. Experimental comparative analyses have confirmed the advantages of the proposed fra… Show more

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