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Blind quantum machine learning with quantum bipartite correlator

Authors :
Li, Changhao
Li, Boning
Amer, Omar
Shaydulin, Ruslan
Chakrabarti, Shouvanik
Wang, Guoqing
Xu, Haowei
Tang, Hao
Schoch, Isidor
Kumar, Niraj
Lim, Charles
Li, Ju
Cappellaro, Paola
Pistoia, Marco
Publication Year :
2023

Abstract

Distributed quantum computing is a promising computational paradigm for performing computations that are beyond the reach of individual quantum devices. Privacy in distributed quantum computing is critical for maintaining confidentiality and protecting the data in the presence of untrusted computing nodes. In this work, we introduce novel blind quantum machine learning protocols based on the quantum bipartite correlator algorithm. Our protocols have reduced communication overhead while preserving the privacy of data from untrusted parties. We introduce robust algorithm-specific privacy-preserving mechanisms with low computational overhead that do not require complex cryptographic techniques. We then validate the effectiveness of the proposed protocols through complexity and privacy analysis. Our findings pave the way for advancements in distributed quantum computing, opening up new possibilities for privacy-aware machine learning applications in the era of quantum technologies.<br />Comment: 11 pages, 3 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.12893
Document Type :
Working Paper