Characterizing 4-string contact interaction using machine learning
Author(s)
Erbin, Harold; Fırat, Atakan Hilmi
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The geometry of 4-string contact interaction of closed string field theory is characterized using machine learning. We obtain Strebel quadratic differentials on 4-punctured spheres as a neural network by performing unsupervised learning with a custom-built loss function. This allows us to solve for local coordinates and compute their associated mapping radii numerically. We also train a neural network distinguishing vertex from Feynman region. As a check, 4-tachyon contact term in the tachyon potential is computed and a good agreement with the results in the literature is observed. We argue that our algorithm is manifestly independent of number of punctures and scaling it to characterize the geometry of n-string contact interaction is feasible.
Date issued
2024-04-03Department
Massachusetts Institute of Technology. Center for Theoretical PhysicsJournal
Journal of High Energy Physics
Publisher
Springer Science and Business Media LLC
Citation
Journal of High Energy Physics. 2024 Apr 03;2024(4):16
Version: Final published version
ISSN
1029-8479
Keywords
Nuclear and High Energy Physics