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Targeting Multi-Loop Integrals with Neural Networks
Published 16 Dec 2021 in hep-ph | (2112.09145v3)
Abstract: Numerical evaluations of Feynman integrals often proceed via a deformation of the integration contour into the complex plane. While valid contours are easy to construct, the numerical precision for a multi-loop integral can depend critically on the chosen contour. We present methods to optimize this contour using a combination of optimized, global complex shifts and a normalizing flow. They can lead to a significant gain in precision.
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