English

The quantum low-rank approximation problem

Quantum Physics 2022-04-04 v2 Machine Learning

Abstract

We consider a quantum version of the famous low-rank approximation problem. Specifically, we consider the distance D(ρ,σ)D(\rho,\sigma) between two normalized quantum states, ρ\rho and σ\sigma, where the rank of σ\sigma is constrained to be at most RR. For both the trace distance and Hilbert-Schmidt distance, we analytically solve for the optimal state σ\sigma that minimizes this distance. For the Hilbert-Schmidt distance, the unique optimal state is σ=τR+NR\sigma = \tau_R +N_R, where τR=ΠRρΠR\tau_R = \Pi_R \rho \Pi_R is given by projecting ρ\rho onto its RR principal components with projector ΠR\Pi_R, and NRN_R is a normalization factor given by NR=1Tr(τR)RΠRN_R = \frac{1- \text{Tr}(\tau_R)}{R}\Pi_R. For the trace distance, this state is also optimal but not uniquely optimal, and we provide the full set of states that are optimal. We briefly discuss how our results have application for performing principal component analysis (PCA) via variational optimization on quantum computers.

Keywords

Cite

@article{arxiv.2203.00811,
  title  = {The quantum low-rank approximation problem},
  author = {Nic Ezzell and Zoë Holmes and Patrick J. Coles},
  journal= {arXiv preprint arXiv:2203.00811},
  year   = {2022}
}

Comments

9 pages, 1 figure