2022
DOI: 10.48550/arxiv.2210.08421
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New Secure Sparse Inner Product with Applications to Machine Learning

Abstract: Sparse inner product (SIP) has the attractive property of overhead being dominated by the intersection of inputs between parties, independent of the actual input size. It has intriguing prospects, especially for boosting machine learning on large-scale data, which is tangled with sparse data. In this paper, we investigate privacy-preserving SIP problems that have rarely been explored before. Specifically, we propose two concrete constructs, one requiring offline linear communication which can be amortized acro… Show more

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