Publication | Open Access
Quantum singular-value decomposition of nonsparse low-rank matrices
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2018
Year
Quantum ScienceQuantum Singular-value DecompositionQuantum ComputingEngineeringQuantum Optimization AlgorithmMatrix AnalysisProcrustes ProblemQuantum AlgorithmInverse ProblemsComputer ScienceQuantum ComputerMatrix TheoryClosest IsometryApproximation TheoryLow-rank Approximation
We present a method to exponentiate nonsparse indefinite low-rank matrices on a quantum computer. Given access to the elements of the matrix, our method allows one to determine the singular values and their associated singular vectors in time exponentially faster in the dimension of the matrix than known classical algorithms. The method extends to non-Hermitian and nonsquare matrices via matrix embedding. Moreover, our method preserves the phase relations between the singular spaces allowing for efficient algorithms that require operating on the entire singular-value decomposition of a matrix. As an example of such an algorithm, we discuss the Procrustes problem of finding a closest isometry to a given matrix.