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4 Pith papers cite this work. Polarity classification is still indexing.

4 Pith papers citing it

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hep-th 4

years

2026 3 2025 1

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UNVERDICTED 4

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background 3

representative citing papers

Anomalies in Neural Network Field Theory

hep-th · 2026-05-12 · unverdicted · novelty 7.0

Derives Schwinger-Dyson equations and Ward identities in NN-FT to study anomalies in QFTs via a conserved parameter-space current, yielding a new perspective on symmetries.

Conformal Defects in Neural Network Field Theories

hep-th · 2025-12-08 · unverdicted · novelty 6.0

The paper introduces a formalism for constructing conformally invariant defects in Neural Network Field Theories, demonstrates it on two toy scalar models, and provides a neural-network reading of a defect OPE expansion in two-point functions.

citing papers explorer

Showing 4 of 4 citing papers.

  • Anomalies in Neural Network Field Theory hep-th · 2026-05-12 · unverdicted · none · ref 35

    Derives Schwinger-Dyson equations and Ward identities in NN-FT to study anomalies in QFTs via a conserved parameter-space current, yielding a new perspective on symmetries.

  • Topological Effects in Neural Network Field Theory hep-th · 2026-04-02 · unverdicted · none · ref 16

    Neural network field theory extended with discrete topological labels recovers the BKT transition and bosonic string T-duality.

  • Optimal Architecture and Fundamental Bounds in Neural Network Field Theory hep-th · 2026-04-29 · unverdicted · none · ref 8

    α=0 architecture in NNFT minimizes finite-width variance, removes IR corrections, and sets a fundamental SNR bound for correlation functions in scalar field theory.

  • Conformal Defects in Neural Network Field Theories hep-th · 2025-12-08 · unverdicted · none · ref 20

    The paper introduces a formalism for constructing conformally invariant defects in Neural Network Field Theories, demonstrates it on two toy scalar models, and provides a neural-network reading of a defect OPE expansion in two-point functions.