Gradient-based stopping rules for maximum-likelihood quantum-state tomography
Abstract
When performing maximum-likelihood quantum-state tomography, one must find the quantum state that maximizes the likelihood of the state given observed measurements on identically prepared systems. The optimization is usually performed with iterative algorithms. This paper provides a gradient-based upper bound on the ratio of the true maximum likelihood and the likelihood of the state of the current iteration, regardless of the particular algorithm used. This bound is useful for formulating stopping rules for halting iterations of maximization algorithms. We discuss such stopping rules in the context of determining confidence regions from log-likelihood differences when the differences are approximately chi-squared distributed.
Cite
@article{arxiv.1205.4043,
title = {Gradient-based stopping rules for maximum-likelihood quantum-state tomography},
author = {Scott Glancy and Emanuel Knill and Mark Girard},
journal= {arXiv preprint arXiv:1205.4043},
year = {2012}
}
Comments
9 pages, single column, 1 figure. Updated to accepted manuscript version. Now includes section headings and other small editorial changes