Physics-informed deep learning for three dimensional black holes

According to AdS/DL (Anti de Sitter/ Deep Learning) correspondence given by \cite{Has}, in this paper with a data-driven approach and leveraging holography principle we have designed an artificial neural network architecture to produce metric field of planar BTZ and quintessence black holes. Data ha...

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Veröffentlicht in:arXiv.org 2021-11
Hauptverfasser: Yaraie, Emad, Ghaffarnejad, Hossein, Farsam, Mohammad
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Farsam, Mohammad
description According to AdS/DL (Anti de Sitter/ Deep Learning) correspondence given by \cite{Has}, in this paper with a data-driven approach and leveraging holography principle we have designed an artificial neural network architecture to produce metric field of planar BTZ and quintessence black holes. Data has been collected by choosing minimally coupled massive scalar field with quantum fluctuations and try to process two emergent and ground-truth metrics versus the holographic parameter which plays role of depth of the neural network. Loss or error function which shows rate of deviation of these two metrics in presence of penalty regularization term reaches to its minimum value when values of the learning rate approach to the observed steepest gradient point. Values of the regularization or penalty term of the quantum scalar field has critical role to matching this two mentioned metric. Also we design an algorithm which helps us to find optimum value for learning parameter and at last we understand that loss function convergence heavily depends on the number of epochs and learning rate.
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subjects Artificial neural networks
Computer architecture
Deep learning
Error functions
Holography
Machine learning
Neural networks
Physics - General Physics
Regularization
Scalars
title Physics-informed deep learning for three dimensional black holes
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