English

Efficient quantum tomography

Quantum Physics 2015-09-15 v2 Data Structures and Algorithms

Abstract

In the quantum state tomography problem, one wishes to estimate an unknown dd-dimensional mixed quantum state ρ\rho, given few copies. We show that O(d/ϵ)O(d/\epsilon) copies suffice to obtain an estimate ρ^\hat{\rho} that satisfies ρ^ρF2ϵ\|\hat{\rho} - \rho\|_F^2 \leq \epsilon (with high probability). An immediate consequence is that O(rank(ρ)d/ϵ2)O(d2/ϵ2)O(\mathrm{rank}(\rho) \cdot d/\epsilon^2) \leq O(d^2/\epsilon^2) copies suffice to obtain an ϵ\epsilon-accurate estimate in the standard trace distance. This improves on the best known prior result of O(d3/ϵ2)O(d^3/\epsilon^2) copies for full tomography, and even on the best known prior result of O(d2log(d/ϵ)/ϵ2)O(d^2\log(d/\epsilon)/\epsilon^2) copies for spectrum estimation. Our result is the first to show that nontrivial tomography can be obtained using a number of copies that is just linear in the dimension. Next, we generalize these results to show that one can perform efficient principal component analysis on ρ\rho. Our main result is that O(kd/ϵ2)O(k d/\epsilon^2) copies suffice to output a rank-kk approximation ρ^\hat{\rho} whose trace distance error is at most ϵ\epsilon more than that of the best rank-kk approximator to ρ\rho. This subsumes our above trace distance tomography result and generalizes it to the case when ρ\rho is not guaranteed to be of low rank. A key part of the proof is the analogous generalization of our spectrum-learning results: we show that the largest kk eigenvalues of ρ\rho can be estimated to trace-distance error ϵ\epsilon using O(k2/ϵ2)O(k^2/\epsilon^2) copies. In turn, this result relies on a new coupling theorem concerning the Robinson-Schensted-Knuth algorithm that should be of independent combinatorial interest.

Keywords

Cite

@article{arxiv.1508.01907,
  title  = {Efficient quantum tomography},
  author = {Ryan O'Donnell and John Wright},
  journal= {arXiv preprint arXiv:1508.01907},
  year   = {2015}
}

Comments

25 pages. This version includes a new section on principal component analysis

R2 v1 2026-06-22T10:29:07.492Z