Fast high-dimensional integration using tensor networks

02/20/2022
by   Sebastian Cassel, et al.
0

The design and application of regression-free tensor network representations for integration is presented. Tensor network methods are demonstrated to outperform Monte Carlo for test problems, and exponential convergence is shown to be achievable for a non-analytic integrand.

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