Aug. 9, 2022, 1:11 a.m. | Armando Bellante, Alessandro Luongo, Stefano Zanero

cs.LG updates on arXiv.org arxiv.org

This paper narrows the gap between previous literature on quantum linear
algebra and practical data analysis on a quantum computer, formalizing quantum
procedures that speed-up the solution of eigenproblems for data representations
in machine learning. The power and practical use of these subroutines is shown
through new quantum algorithms, sublinear in the input matrix's size, for
principal component analysis, correspondence analysis, and latent semantic
analysis. We provide a theoretical analysis of the run-time and prove tight
bounds on the randomized …

algorithms analysis arxiv data quantum representation svd

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