Deep Learning and AdS/QCD
High Energy Physics - Theory
2020-07-29 v2 Disordered Systems and Neural Networks
High Energy Physics - Phenomenology
Abstract
We propose a deep learning method to build an AdS/QCD model from the data of hadron spectra. A major problem of generic AdS/QCD models is that a large ambiguity is allowed for the bulk gravity metric with which QCD observables are holographically calculated. We adopt the experimentally measured spectra of and mesons as training data, and perform a supervised machine learning which determines concretely a bulk metric and a dilaton profile of an AdS/QCD model. Our deep learning (DL) architecture is based on the AdS/DL correspondence (arXiv:1802.08313) where the deep neural network is identified with the emergent bulk spacetime.
Cite
@article{arxiv.2005.02636,
title = {Deep Learning and AdS/QCD},
author = {Tetsuya Akutagawa and Koji Hashimoto and Takayuki Sumimoto},
journal= {arXiv preprint arXiv:2005.02636},
year = {2020}
}
Comments
13 pages, 9 figures, v2: Figure display problem resolved, the content unchanged