Reconstruction of quantum states by applying an analytical optimization model
- URL: http://arxiv.org/abs/2501.07404v1
- Date: Mon, 13 Jan 2025 15:21:08 GMT
- Title: Reconstruction of quantum states by applying an analytical optimization model
- Authors: Rohit Prasad, Pratyay Ghosh, Ronny Thomale, Tobias Huber-Loyola,
- Abstract summary: We show that when restricting the measurement sample size, improvement over existing algorithms can be achieved.
Our findings underline the multiplicity of solutions in the reconstruction problem, depending upon the generated state and measurement model utilized.
- Score: 1.0499611180329804
- License:
- Abstract: When working with quantum states, analysis of the final quantum state generated through probabilistic measurements is essential. This analysis is typically conducted by constructing the density matrix from either partial or full tomography measurements of the quantum state. While full tomography measurement offers the most accurate reconstruction of the density matrix, limited measurements pose challenges for reconstruction algorithms, often resulting in non-physical density matrices with negative eigenvalues. This is often remedied using maximum likelihood estimators, which have a high computing time or by other estimation methods that decrease the reconstructed fidelity. In this study, we show that when restricting the measurement sample size, improvement over existing algorithms can be achieved. Our findings underline the multiplicity of solutions in the reconstruction problem, depending upon the generated state and measurement model utilized, thus motivating further research towards identifying optimal algorithms tailored to specific experimental contexts.
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