Feed-forward neural networks are a novel class of variational wave functions for correlated many-body quantum systems. Here, we propose a specific neural network ansatz suitable for systems with real-valued wave functions. Its characteristic is to encode the all-important rugged sign structure of a quantum wave function in a convolutional neural network with discrete output. Its training is achieved through an evolutionary algorithm. We test our variational ansatz and training strategy on two spin-1/2 Heisenberg models, one on the two-dimensional square lattice and one on the three-dimensional pyrochlore lattice. In the former, our ansatz converges with high accuracy to the analytically known sign structures of ordered phases. In the latter...
Most proposals for quantum neural networks have skipped over the problem of how to train the networ...
We propose a quantum generalisation of a classical neural network. The classical neurons are firstly...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
Feed-forward neural networks are a novel class of variational wave functions for correlated many-bod...
Feed-forward neural networks are a novel class of variational wave functions for correlated many-bod...
Strongly interacting quantum systems described by non-stoquastic Hamiltonians exhibit rich low-tempe...
Variational methods have proven to be excellent tools to approximate the ground states of complex ma...
In the last few years, quantum computing and machine learning fostered rapid developments in their r...
We investigate the Shastry-Sutherland model (SSM), i.e., spin-1/2 quantum Heisen- berg model on a Sh...
International audienceWe propose a neural-network variational quantum algorithm to simulate the time...
Neural quantum states (NQS) attract a lot of attention due to their potential to serve as a very exp...
Funder: Draper’s Company Research FellowshipAbstract: We examine the usefulness of applying neural n...
Computing dynamical distributions in quantum many-body systems represents one of the paradigmatic op...
We examine applicability of the valence bond basis correlator product state ansatz, equivalent to th...
We outline an adaptive training framework for artificial neural networks which aims to simultaneousl...
Most proposals for quantum neural networks have skipped over the problem of how to train the networ...
We propose a quantum generalisation of a classical neural network. The classical neurons are firstly...
Quantum machine learning offers a promising advantage in extracting information about quantum states...
Feed-forward neural networks are a novel class of variational wave functions for correlated many-bod...
Feed-forward neural networks are a novel class of variational wave functions for correlated many-bod...
Strongly interacting quantum systems described by non-stoquastic Hamiltonians exhibit rich low-tempe...
Variational methods have proven to be excellent tools to approximate the ground states of complex ma...
In the last few years, quantum computing and machine learning fostered rapid developments in their r...
We investigate the Shastry-Sutherland model (SSM), i.e., spin-1/2 quantum Heisen- berg model on a Sh...
International audienceWe propose a neural-network variational quantum algorithm to simulate the time...
Neural quantum states (NQS) attract a lot of attention due to their potential to serve as a very exp...
Funder: Draper’s Company Research FellowshipAbstract: We examine the usefulness of applying neural n...
Computing dynamical distributions in quantum many-body systems represents one of the paradigmatic op...
We examine applicability of the valence bond basis correlator product state ansatz, equivalent to th...
We outline an adaptive training framework for artificial neural networks which aims to simultaneousl...
Most proposals for quantum neural networks have skipped over the problem of how to train the networ...
We propose a quantum generalisation of a classical neural network. The classical neurons are firstly...
Quantum machine learning offers a promising advantage in extracting information about quantum states...