Publication | Open Access
Investigating bias in maximum-likelihood quantum-state tomography
21
Citations
15
References
2017
Year
EngineeringQuantum MeasurementQuantum SensingOptical Homodyne TomographyMeasurement ProblemQuantum ComputingQuantum Machine LearningQuantum SimulationPerform TomographyMaximum-likelihood Quantum-state TomographyQuantum EntanglementRadiologyQuantum ScienceQuantum TomographyPhysicsMedical ImagingQuantum InformationNatural SciencesApplied PhysicsBiomedical Imaging
Maximum-likelihood quantum-state tomography yields estimators that are consistent, provided that the likelihood model is correct, but the maximum-likelihood estimators may have bias for any finite data set. The bias of an estimator is the difference between the expected value of the estimate and the true value of the parameter being estimated. This paper investigates bias in the widely used maximum-likelihood quantum-state tomography. Our goal is to understand how the amount of bias depends on factors such as the purity of the true state, the number of measurements performed, and the number of different bases in which the system is measured. For this, we perform numerical experiments that simulate optical homodyne tomography of squeezed thermal states under various conditions, perform tomography, and estimate bias in the purity of the estimated state. We find that estimates of higher purity states exhibit considerable bias, such that the estimates have lower purities than the true states.
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