4.8 Article

Latent Space Purification via Neural Density Operators

期刊

PHYSICAL REVIEW LETTERS
卷 120, 期 24, 页码 -

出版社

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevLett.120.240503

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资金

  1. NSERC
  2. Canadian Research Chairs program
  3. Ontario Trillium Foundation
  4. Perimeter Institute for Theoretical Physics
  5. National Science Foundation [NSF PHY-1125915]
  6. Industry Canada
  7. Province of Ontario through the Ministry of Research Innovation

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Machine learning is actively being explored for its potential to design, validate, and even hybridize with near-term quantum devices. A central question is whether neural networks can provide a tractable representation of a given quantum state of interest. When true, stochastic neural networks can be employed for many unsupervised tasks, including generative modeling and state tomography. However, to be applicable for real experiments, such methods must be able to encode quantum mixed states. Here, we parametrize a density matrix based on a restricted Boltzmann machine that is capable of purifying a mixed state through auxiliary degrees of freedom embedded in the latent space of its hidden units. We implement the algorithm numerically and use it to perform tomography on some typical states of entangled photons, achieving fidelities competitive with standard techniques.

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