English

Deep learning-based holography for T-linear resistivity

High Energy Physics - Theory 2025-12-15 v1 Disordered Systems and Neural Networks Strongly Correlated Electrons General Relativity and Quantum Cosmology

Abstract

We employ deep learning within holographic duality to investigate TT-linear resistivity, a hallmark of strange metals. Utilizing Physics-Informed Neural Networks, we incorporate boundary data for TT-linear resistivity and bulk differential equations into a loss function. This approach allows us to derive dilaton potentials in Einstein-Maxwell-Dilaton-Axion theories, capturing essential features of strange metals, such as TT-linear resistivity and linear specific heat scaling. We also explore the impact of the resistivity slope on dilaton potentials. Regardless of slope, dilaton potentials exhibit universal exponential growth at low temperatures, driving TT-linear resistivity and matching infrared geometric analyses. At a specific slope, our method rediscovers the Gubser-Rocha model, a well-known holographic model of strange metals. Additionally, the robustness of TT-linear resistivity at higher temperatures correlates with the asymptotic AdS behavior of the dilaton coupling to the Maxwell term. Our findings suggest that deep learning could help uncover mechanisms in holographic condensed matter systems and advance our understanding of strange metals.

Keywords

Cite

@article{arxiv.2502.10245,
  title  = {Deep learning-based holography for T-linear resistivity},
  author = {Byoungjoon Ahn and Hyun-Sik Jeong and Chang-Woo Ji and Keun-Young Kim and Kwan Yun},
  journal= {arXiv preprint arXiv:2502.10245},
  year   = {2025}
}

Comments

39 pages, 17 figures

R2 v1 2026-06-28T21:44:33.583Z