In this work, we study generative adversarial networks (GANs) as a tool to learn the distribution of spin configurations and to generate samples, conditioned on external tuning parameters or other quantities associated with individual configurations. For concreteness, we focus on two examples of conditional variables---the temperature of the system and the energy of the samples. We show that temperature-conditioned models can not only be used to generate samples across thermal phase transitions, but also be employed as unsupervised indicators of transitions. To this end, we introduce a GAN-fidelity measure that captures the model’s susceptibility to external changes of parameters. The proposed energy-conditioned models are integrated with M...
The problem of identifying the phase of a given system for a certain value of the temperature can be...
AbstractCalculating thermodynamic potentials and observables efficiently and accurately is key for t...
The autoregressive neural networks are emerging as a powerful computational tool to solve relevant p...
Variational autoencoders employ a neural network to encode a probabilistic representation of a data ...
In recent years Machine Learning has proved to be successful in many technological applications and ...
In this paper, we build and explore supervised learning models of ferromagnetic system behavior, usi...
15 pagesInternational audienceDetermining phase diagrams and phase transitions semiautomatically usi...
The computation of dynamical correlators of quantum many-body systems represents an open critical ch...
Machine learning (ML) has been recently used as a very effective tool for the study and prediction o...
We present a novel mathematical model that seeks to capture the key design feature of generative adv...
Machine learning offers an unprecedented perspective for the problem of classifying phases in conden...
We employ several unsupervised machine learning techniques, including autoencoders, random trees emb...
Generative Adversarial Networks (GANs), while widely successful in modeling complex data distributio...
It is known that a trained Restricted Boltzmann Machine (RBM) on the binary Monte Carlo Ising spin c...
The computation of dynamical correlators of quantum many-body systems represents an open critical ch...
The problem of identifying the phase of a given system for a certain value of the temperature can be...
AbstractCalculating thermodynamic potentials and observables efficiently and accurately is key for t...
The autoregressive neural networks are emerging as a powerful computational tool to solve relevant p...
Variational autoencoders employ a neural network to encode a probabilistic representation of a data ...
In recent years Machine Learning has proved to be successful in many technological applications and ...
In this paper, we build and explore supervised learning models of ferromagnetic system behavior, usi...
15 pagesInternational audienceDetermining phase diagrams and phase transitions semiautomatically usi...
The computation of dynamical correlators of quantum many-body systems represents an open critical ch...
Machine learning (ML) has been recently used as a very effective tool for the study and prediction o...
We present a novel mathematical model that seeks to capture the key design feature of generative adv...
Machine learning offers an unprecedented perspective for the problem of classifying phases in conden...
We employ several unsupervised machine learning techniques, including autoencoders, random trees emb...
Generative Adversarial Networks (GANs), while widely successful in modeling complex data distributio...
It is known that a trained Restricted Boltzmann Machine (RBM) on the binary Monte Carlo Ising spin c...
The computation of dynamical correlators of quantum many-body systems represents an open critical ch...
The problem of identifying the phase of a given system for a certain value of the temperature can be...
AbstractCalculating thermodynamic potentials and observables efficiently and accurately is key for t...
The autoregressive neural networks are emerging as a powerful computational tool to solve relevant p...