Variational Approach to Quantum State Tomography based on Maximal Entropy Formalism
Rishabh Gupta, Manas Sajjan, Raphael D. Levine, Sabre Kais

TL;DR
This paper introduces a variational method using maximal entropy formalism for quantum state tomography, enabling high-fidelity reconstruction of quantum states from measurement data, suitable for near-term quantum devices.
Contribution
It develops a variational algorithm employing maximal entropy formalism and hybrid quantum-classical optimization for efficient quantum state reconstruction.
Findings
Successfully reconstructs quantum states with high fidelity.
Demonstrates efficacy on informationally complete operator sets.
Compatible with near-term quantum hardware.
Abstract
Quantum state tomography is an integral part of quantum computation and offers the starting point for the validation of various quantum devices. One of the central tasks in the field of state tomography is to reconstruct with high fidelity, the quantum states of a quantum system. From an experiment on a real quantum device, one can obtain the mean measurement values of different operators. With such a data as input, in this report we employ the maximal entropy formalism to construct the least biased mixed quantum state that is consistent with the given set of expectation values. Even though in principle, the reported formalism is quite general and should work for an arbitrary set of observables, in practice we shall demonstrate the efficacy of the algorithm on an informationally complete (IC) set of Hermitian operators. Such a set possesses the advantage of uniquely specifying a single…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Neural Networks and Applications · Quantum Information and Cryptography
