The large deviation statistics of dynamical observables is encoded in the spectral properties of deformed Markov generators. Recent works have shown that tensor network methods are well suited to compute accurately the relevant leading eigenvalues and eigenvectors. However, the efficient generation of the corresponding rare trajectories is a harder task. Here, we show how to exploit the matrix product state approximation of the dominant eigenvector to implement an efficient sampling scheme which closely resembles the optimal (so-called "Doob") dynamics that realizes the rare events. We demonstrate our approach on three well-studied lattice models, the Fredrickson-Andersen and East kinetically constrained models, and the symmetric simple exc...
Essential information about the stationary and slow kinetic properties of macromolecules is containe...
The dominant eigenfunctions of the Koopman operator characterize the metastabilities and slow-timesc...
Tensor network states are powerful variational Ansätze for many-body ground states of quantum lattic...
The large deviation statistics of dynamical observables is encoded in the spectral properties of def...
Here we demonstrate that tensor network techniques | originally devised for the analysis of quantum ...
Recent work has shown the effectiveness of tensor network methods for computing large deviation func...
Recent work has shown the effectiveness of tensor network methods for computing large deviation func...
We use projected entangled-pair states (PEPS) to calculate the large deviation statistics of the dyn...
We use projected entangled-pair states (PEPS) to calculate the large deviations (LD) statistics of t...
We present a strategy to construct guiding distribution functions (GDFs) based on variance minimizat...
Conventional Quantum Monte Carlo methods, routinely used to compute properties of many-body quantum ...
We study the dynamical large deviations of the classical stochastic symmetric simple exclusion proce...
We describe a simple form of importance sampling designed to bound and compute large-deviation rate ...
We adapt the time-evolving block decimation (TEBD) algorithm, originally devised to simulate the dyn...
This paper deals with the optimization of trial states for the computation of dominant eigenvalues o...
Essential information about the stationary and slow kinetic properties of macromolecules is containe...
The dominant eigenfunctions of the Koopman operator characterize the metastabilities and slow-timesc...
Tensor network states are powerful variational Ansätze for many-body ground states of quantum lattic...
The large deviation statistics of dynamical observables is encoded in the spectral properties of def...
Here we demonstrate that tensor network techniques | originally devised for the analysis of quantum ...
Recent work has shown the effectiveness of tensor network methods for computing large deviation func...
Recent work has shown the effectiveness of tensor network methods for computing large deviation func...
We use projected entangled-pair states (PEPS) to calculate the large deviation statistics of the dyn...
We use projected entangled-pair states (PEPS) to calculate the large deviations (LD) statistics of t...
We present a strategy to construct guiding distribution functions (GDFs) based on variance minimizat...
Conventional Quantum Monte Carlo methods, routinely used to compute properties of many-body quantum ...
We study the dynamical large deviations of the classical stochastic symmetric simple exclusion proce...
We describe a simple form of importance sampling designed to bound and compute large-deviation rate ...
We adapt the time-evolving block decimation (TEBD) algorithm, originally devised to simulate the dyn...
This paper deals with the optimization of trial states for the computation of dominant eigenvalues o...
Essential information about the stationary and slow kinetic properties of macromolecules is containe...
The dominant eigenfunctions of the Koopman operator characterize the metastabilities and slow-timesc...
Tensor network states are powerful variational Ansätze for many-body ground states of quantum lattic...