Efficient method for computing the maximum-likelihood quantum state from measurements with additive Gaussian noise

We provide an efficient method for computing the maximum-likelihood mixed quantum state (with density matrix ρ) given a set of measurement outcomes in a complete orthonormal operator basis subject to Gaussian noise. Our method works by first changing basis yielding a candidate density matrix μ which...

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Bibliographic Details
Published inPhysical review letters Vol. 108; no. 7; p. 070502
Main Authors Smolin, John A, Gambetta, Jay M, Smith, Graeme
Format Journal Article
LanguageEnglish
Published United States 17.02.2012
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Summary:We provide an efficient method for computing the maximum-likelihood mixed quantum state (with density matrix ρ) given a set of measurement outcomes in a complete orthonormal operator basis subject to Gaussian noise. Our method works by first changing basis yielding a candidate density matrix μ which may have nonphysical (negative) eigenvalues, and then finding the nearest physical state under the 2-norm. Our algorithm takes at worst O(d(4)) for the basis change plus O(d(3)) for finding ρ where d is the dimension of the quantum state. In the special case where the measurement basis is strings of Pauli operators, the basis change takes only O(d(3)) as well. The workhorse of the algorithm is a new linear-time method for finding the closest probability distribution (in Euclidean distance) to a set of real numbers summing to one.
ISSN:1079-7114
DOI:10.1103/PhysRevLett.108.070502