Predicting the phase diagram of interacting quantum many-body systems is a central problem in condensed matter physics and related fields. A variety of quantum many-body systems, ranging from unconventional superconductors to spin liquids, exhibit complex competing phases whose theoretical description has been the focus of intense efforts. Here, we show that neural network quantum states can be combined with a Lee-Yang theory of quantum phase transitions to predict the critical points of strongly-correlated spin lattices. Specifically, we implement our approach for quantum phase transitions in the transverse-field Ising model on different lattice geometries in one, two, and three dimensions. We show that the Lee-Yang theory combined with ne...
We introduce and analyze an open quantum generalization of the q-state Potts-Hopfield neural network...
Phase measurement constitutes a key task in many fields of science, both in the classical and quantu...
We introduce and analyze an open quantum generalization of the q-state Potts-Hopfield neural network...
Determining the phase diagram of interacting quantum many-body systems is an important task for a wi...
Quantum phase transitions are a ubiquitous many-body phenomenon that occurs in a wide range of physi...
The emergence of a collective behavior in a many-body system is responsible of the quantum criticali...
Recently, quantum-state representation using artificial neural networks has started to be recognized...
Quantum gas systems are ideal analog quantum simulation platforms for tackling some of the most chal...
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...
One of the fundamental problems in analytically approaching the quantum many-body problem is that th...
Determining the phase diagram of interacting quantum many-body systems is an important task for a wi...
19 pages, 12 figures, extended version of an accepted paper at the 24th European Conference on Artif...
We introduce and analyze an open quantum generalization of the q-state Potts-Hopfield neural network...
Phase measurement constitutes a key task in many fields of science, both in the classical and quantu...
We introduce and analyze an open quantum generalization of the q-state Potts-Hopfield neural network...
Determining the phase diagram of interacting quantum many-body systems is an important task for a wi...
Quantum phase transitions are a ubiquitous many-body phenomenon that occurs in a wide range of physi...
The emergence of a collective behavior in a many-body system is responsible of the quantum criticali...
Recently, quantum-state representation using artificial neural networks has started to be recognized...
Quantum gas systems are ideal analog quantum simulation platforms for tackling some of the most chal...
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...
One of the fundamental problems in analytically approaching the quantum many-body problem is that th...
Determining the phase diagram of interacting quantum many-body systems is an important task for a wi...
19 pages, 12 figures, extended version of an accepted paper at the 24th European Conference on Artif...
We introduce and analyze an open quantum generalization of the q-state Potts-Hopfield neural network...
Phase measurement constitutes a key task in many fields of science, both in the classical and quantu...
We introduce and analyze an open quantum generalization of the q-state Potts-Hopfield neural network...