Recent work has shown the effectiveness of tensor network methods for computing large deviation functions in constrained stochastic models in the infinite time limit. Here we show that these methods can also be used to study the statistics of dynamical observables at arbitrary finite time. This is a harder problem because, in contrast to the infinite time case where only the extremal eigenstate of a tilted Markov generator is relevant, for finite time the whole spectrum plays a role. We show that finite time dynamical partition sums can be computed efficiently and accurately in one dimension using matrix product states, and describe how to use such results to generate rare event trajectories on demand. We apply our methods to the Fredrickso...
The Fredkin spin chain serves as an interesting theoretical example of a quantum Hamiltonian whose g...
We introduce a numerical algorithm to simulate the time evolution of a matrix product state under a ...
Stochastic processes on graphs can describe a great variety of phenomena ranging from neural activit...
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...
Here we demonstrate that tensor network techniques | originally devised for the analysis of quantum ...
The large deviation statistics of dynamical observables is encoded in the spectral properties of def...
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 study the dynamical large deviations of the classical stochastic symmetric simple exclusion proce...
We adapt the time-evolving block decimation (TEBD) algorithm, originally devised to simulate the dyn...
We adapt the time-evolving block decimation (TEBD) algorithm, originally devised to simulate the dyn...
We study the statistical properties of the long-time dynamics of the rule 54 reversible cellular aut...
We propose a new method for computing the ground state properties and the time evolution of infinite...
The open asymmetric simple exclusion process (ASEP) has emerged as a paradigmatic model of nonequili...
The Fredkin spin chain serves as an interesting theoretical example of a quantum Hamiltonian whose g...
We introduce a numerical algorithm to simulate the time evolution of a matrix product state under a ...
Stochastic processes on graphs can describe a great variety of phenomena ranging from neural activit...
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...
Here we demonstrate that tensor network techniques | originally devised for the analysis of quantum ...
The large deviation statistics of dynamical observables is encoded in the spectral properties of def...
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 study the dynamical large deviations of the classical stochastic symmetric simple exclusion proce...
We adapt the time-evolving block decimation (TEBD) algorithm, originally devised to simulate the dyn...
We adapt the time-evolving block decimation (TEBD) algorithm, originally devised to simulate the dyn...
We study the statistical properties of the long-time dynamics of the rule 54 reversible cellular aut...
We propose a new method for computing the ground state properties and the time evolution of infinite...
The open asymmetric simple exclusion process (ASEP) has emerged as a paradigmatic model of nonequili...
The Fredkin spin chain serves as an interesting theoretical example of a quantum Hamiltonian whose g...
We introduce a numerical algorithm to simulate the time evolution of a matrix product state under a ...
Stochastic processes on graphs can describe a great variety of phenomena ranging from neural activit...