We study the so-called neural network flow of spin configurations in the 2-d Ising ferromagnet. This flow is generated by successive reconstructions of spin configurations, obtained by an artificial neural network like a restricted Boltzmann machine or an autoencoder. It was reported recently that this flow may have a fixed point at the critical temperature of the system, and even allow the computation of critical exponents. Here we focus on the flow produced by a fully-connected autoencoder, and we refute the claim that this flow converges to the critical point of the system by directly measuring physical observables, and showing that the flow strongly depends on the network hyperparameters. We explore the network metric, the reconstructio...
We investigate deep learning autoencoders for the unsupervised recognition of phase transitions in p...
This work maps deep neural networks to classical Ising spin models, allowing them to be described us...
We explore the use of Physics-Informed Neural Networks (PINNs) for reconstructing full magnetohydrod...
It is known that a trained Restricted Boltzmann Machine (RBM) on the binary Monte Carlo Ising spin c...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
Square_ferro_2.txt contains vectorized spin configurations in each file line, starting with the temp...
We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neigh...
Abstract: Neural networks are nowadays both powerful operational tools (e.g., for pattern recognitio...
In this work, Artificial Neural Network (ANN) was used to model the dynamic behavior of ferromagneti...
Title: Reconstruction of magnetic configurations using machine learning approaches Author: Tatiana V...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
15 pagesInternational audienceDetermining phase diagrams and phase transitions semiautomatically usi...
Neural networks are nowadays both powerful operational tools (e.g., for pattern recognition, data mi...
The objective of this paper is to investigate the ability of physics-informed neural networks to lea...
We investigate the capabilities of Physics-Informed Neural Networks (PINNs) to reconstruct turbulent...
We investigate deep learning autoencoders for the unsupervised recognition of phase transitions in p...
This work maps deep neural networks to classical Ising spin models, allowing them to be described us...
We explore the use of Physics-Informed Neural Networks (PINNs) for reconstructing full magnetohydrod...
It is known that a trained Restricted Boltzmann Machine (RBM) on the binary Monte Carlo Ising spin c...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
Square_ferro_2.txt contains vectorized spin configurations in each file line, starting with the temp...
We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neigh...
Abstract: Neural networks are nowadays both powerful operational tools (e.g., for pattern recognitio...
In this work, Artificial Neural Network (ANN) was used to model the dynamic behavior of ferromagneti...
Title: Reconstruction of magnetic configurations using machine learning approaches Author: Tatiana V...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
15 pagesInternational audienceDetermining phase diagrams and phase transitions semiautomatically usi...
Neural networks are nowadays both powerful operational tools (e.g., for pattern recognition, data mi...
The objective of this paper is to investigate the ability of physics-informed neural networks to lea...
We investigate the capabilities of Physics-Informed Neural Networks (PINNs) to reconstruct turbulent...
We investigate deep learning autoencoders for the unsupervised recognition of phase transitions in p...
This work maps deep neural networks to classical Ising spin models, allowing them to be described us...
We explore the use of Physics-Informed Neural Networks (PINNs) for reconstructing full magnetohydrod...