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Efficient Privacy-Preserving Recommendation on Sparse Data using Fully Homomorphic Encryption

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arxiv 2509.03024 v1 pith:L4WOMXYB submitted 2025-09-03 cs.CR cs.AIcs.LG

Efficient Privacy-Preserving Recommendation on Sparse Data using Fully Homomorphic Encryption

classification cs.CR cs.AIcs.LG
keywords recommendationsparsesystemscommunicationdataencryptedcostsefficiently
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In today's data-driven world, recommendation systems personalize user experiences across industries but rely on sensitive data, raising privacy concerns. Fully homomorphic encryption (FHE) can secure these systems, but a significant challenge in applying FHE to recommendation systems is efficiently handling the inherently large and sparse user-item rating matrices. FHE operations are computationally intensive, and naively processing various sparse matrices in recommendation systems would be prohibitively expensive. Additionally, the communication overhead between parties remains a critical concern in encrypted domains. We propose a novel approach combining Compressed Sparse Row (CSR) representation with FHE-based matrix factorization that efficiently handles matrix sparsity in the encrypted domain while minimizing communication costs. Our experimental results demonstrate high recommendation accuracy with encrypted data while achieving the lowest communication costs, effectively preserving user privacy.

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