Variational Tensor Network Simulation of Gaussian Boson Sampling and Beyond
The continuous variable quantum computing platform constitutes a promising candidate for realizing quantum advantage, as exemplified in Gaussian Boson Sampling. While noise in the experiments makes the computation attainable for classical simulations, it has been suggested that the addition of non-l...
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Zusammenfassung: | The continuous variable quantum computing platform constitutes a promising
candidate for realizing quantum advantage, as exemplified in Gaussian Boson
Sampling. While noise in the experiments makes the computation attainable for
classical simulations, it has been suggested that the addition of non-linear
elements to the experiment will help retain the quantum advantage. We propose a
classical simulation tool for general continuous variable sampling problems,
including Gaussian Boson Sampling and beyond. We reformulate the sampling
problem as that of finding the ground state of a simple few-body Hamiltonian.
This allows us to employ powerful variational methods based on tensor networks
and to read off the simulation error directly from the expectation value of the
Hamiltonian. We validate our method by simulating Gaussian Boson Sampling,
where we achieve results comparable to the state of the art. We also consider a
non-Gaussian sampling problem, for which we develop novel local basis
optimization techniques based on a non-linear parameterization of the implicit
basis, resulting in high effective cutoffs with diminished computational
overhead. |
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DOI: | 10.48550/arxiv.2410.18740 |