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Topological Effects in Neural Network Field Theory

RESEARCH PAPER Published on April 2, 2026

Research by Christian Ferko, James Halverson, Vishnu Jejjala and 1 others

Source: arXiv 5 min read advanced

Summary

Neural network field theory formulates field theory as a statistical ensemble of fields defined by a network architecture and a density on its parameters. We extend the construction to topological settings via the inclusion of discrete parameters that label the topological quantum number. We recover the Berezinskii--Kosterlitz--Thouless transition, including the spin-wave critical line and the proliferation of vortices at high temperatures. We also verify the T-duality of the bosonic string, showing invariance under the exchange of momentum and winding on $S^1$, the transformation of the sigma model couplings according to the Buscher rules on constant toroidal backgrounds, the enhancement of the current algebra at self-dual radius, and non-geometric T-fold transition functions.

#cs-lg #kosterlitz #network #quantum #model #neural network field theory neural
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