Motivated by the recent success of tensor networks to calculate the residual entropy of spin ice and kagome Ising models, we develop a general framework to study frustrated Ising models in terms of infinite tensor networks that can be contracted using standard algorithms for infinite systems. This is achieved by reformulating the problem as local rules for configurations on overlapping clusters chosen in such a way that they relieve the frustration, i.e., that the energy can be minimized independently on each cluster. We show that optimizing the choice of clusters, including the weight on shared bonds, is crucial for the contractibility of the tensor networks, and we derive some basic rules and a linear program to implement them. We illustr...
Tensor network states provide an efficient class of states that faithfully capture strongly correlat...
Tree tensor network (TTN) provides an essential theoretical framework for the practical simulation o...
Tensor network algorithms have emerged as a new approach in simulating strongly correlated quantum m...
Motivated by the recent success of tensor networks to calculate the residual entropy of spin ice and...
The study of frustrated spin systems often requires time-consuming numerical simulations. As the sim...
Frustration is a ubiquitous phenomenon in many-body physics that influences the nature of the system...
We develop a technique for calculating three-dimensional classical partition functions using project...
The study of frustrated spin systems often requires time-consuming numerical simulations. As the sim...
In this article we study the classical nearest-neighbour spin-ice model (nnSI) by means of Monte Car...
Being able to accurately describe the dynamics steady states of driven and/or dissipative but quantu...
A new class of two-dimensional magnetic materials Cu9X2(cpa)(6)center dot xH(2)O (cp...
The frustrated Ising model in two dimensions is revisited. The frustration is quantified in terms of...
We develop a tensor network technique that can solve universal reversible classical computational pr...
Understanding extreme non-locality in many-body quantum systems can help resolve questions in thermo...
Theory of quantum many-body systems plays a key role in understanding the properties of phases of ma...
Tensor network states provide an efficient class of states that faithfully capture strongly correlat...
Tree tensor network (TTN) provides an essential theoretical framework for the practical simulation o...
Tensor network algorithms have emerged as a new approach in simulating strongly correlated quantum m...
Motivated by the recent success of tensor networks to calculate the residual entropy of spin ice and...
The study of frustrated spin systems often requires time-consuming numerical simulations. As the sim...
Frustration is a ubiquitous phenomenon in many-body physics that influences the nature of the system...
We develop a technique for calculating three-dimensional classical partition functions using project...
The study of frustrated spin systems often requires time-consuming numerical simulations. As the sim...
In this article we study the classical nearest-neighbour spin-ice model (nnSI) by means of Monte Car...
Being able to accurately describe the dynamics steady states of driven and/or dissipative but quantu...
A new class of two-dimensional magnetic materials Cu9X2(cpa)(6)center dot xH(2)O (cp...
The frustrated Ising model in two dimensions is revisited. The frustration is quantified in terms of...
We develop a tensor network technique that can solve universal reversible classical computational pr...
Understanding extreme non-locality in many-body quantum systems can help resolve questions in thermo...
Theory of quantum many-body systems plays a key role in understanding the properties of phases of ma...
Tensor network states provide an efficient class of states that faithfully capture strongly correlat...
Tree tensor network (TTN) provides an essential theoretical framework for the practical simulation o...
Tensor network algorithms have emerged as a new approach in simulating strongly correlated quantum m...