Sameeka Saini


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2024

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Privacy Preservation in Federated Market Basket Analysis using Homomorphic Encryption
Sameeka Saini | Durga Toshniwal
Proceedings of the First International Conference on Natural Language Processing and Artificial Intelligence for Cyber Security

Our proposed work introduces a novel approach to privacy-preserving federated learning market basket analysis using Homomorphic encryption. By encrypting frequent mining operations using Homomorphic encryption, our method ensures data privacy without compromising analysis efficiency. Experiments on diverse datasets validate its effectiveness in maintaining data integrity while preserving privacy.