We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neighbor energy of the 4 74 Ising model. Using its success at this task, we motivate the study of the larger 8 78 Ising model, showing that the deep neural network can learn the nearest-neighbor Ising Hamiltonian after only seeing a vanishingly small fraction of configuration space. Additionally, we show that the neural network has learned both the energy and magnetization operators with sufficient accuracy to replicate the low-temperature Ising phase transition. We then demonstrate the ability of the neural network to learn other spin models, teaching the convolutional deep neural network to accurately predict the long-range interaction of a scre...
Machine learning (ML) has been recently used as a very effective tool for the study and prediction o...
In recent years Machine Learning has proved to be successful in many technological applications and ...
We present a physical interpretation of machine learning functions, opening up the possibility to co...
This work maps deep neural networks to classical Ising spin models, allowing them to be described us...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
We demonstrate, by means of a convolutional neural network, that the features learned in the two-dim...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
The renormalization group (RG) is an essential technique in statistical physics and quantum field th...
We present a physically-motivated topology of a deep neural network that can efficiently infer exten...
The renormalization group (RG) is an essential technique in statistical physics and quantum field th...
Machine learning (ML) has been recently used as a very effective tool for the study and prediction o...
In recent years Machine Learning has proved to be successful in many technological applications and ...
We present a physical interpretation of machine learning functions, opening up the possibility to co...
This work maps deep neural networks to classical Ising spin models, allowing them to be described us...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
We demonstrate, by means of a convolutional neural network, that the features learned in the two-dim...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
The renormalization group (RG) is an essential technique in statistical physics and quantum field th...
We present a physically-motivated topology of a deep neural network that can efficiently infer exten...
The renormalization group (RG) is an essential technique in statistical physics and quantum field th...
Machine learning (ML) has been recently used as a very effective tool for the study and prediction o...
In recent years Machine Learning has proved to be successful in many technological applications and ...
We present a physical interpretation of machine learning functions, opening up the possibility to co...