Deep learning black hole metrics from shear viscosity

Autor: Yan, Yu-Kun, Wu, Shao-Feng, Ge, Xian-Hui, Tian, Yu
Rok vydání: 2020
Předmět:
Zdroj: Physical Review D 102, 101902(R) (2020)
Druh dokumentu: Working Paper
DOI: 10.1103/PhysRevD.102.101902
Popis: Based on AdS/CFT correspondence, we build a deep neural network to learn black hole metrics from the complex frequency-dependent shear viscosity. The network architecture provides a discretized representation of the holographic renormalization group flow of the shear viscosity and can be applied to a large class of strongly coupled field theories. Given the existence of the horizon and guided by the smoothness of spacetime, we show that Schwarzschild and Reissner-Nordstr\"{o}m metrics can be learned accurately. Moreover, we illustrate that the generalization ability of the deep neural network can be excellent, which indicates that by using the black hole spacetime as a hidden data structure, a wide spectrum of the shear viscosity can be generated from a narrow frequency range. These results are further generalized to an Einstein-Maxwell-dilaton black hole. Our work might not only suggest a data-driven way to study holographic transports but also shed some light on holographic duality and deep learning.
Comment: 6+6 pages, 4 figures, 1 table
Databáze: arXiv