Tom Vieijra

2papers

2 Papers

QUANT-PHFeb 16, 2022
Generative modeling with projected entangled-pair states

Tom Vieijra, Laurens Vanderstraeten, Frank Verstraete

We argue and demonstrate that projected entangled-pair states (PEPS) outperform matrix product states significantly for the task of generative modeling of datasets with an intrinsic two-dimensional structure such as images. Our approach builds on a recently introduced algorithm for sampling PEPS, which allows for the efficient optimization and sampling of the distributions.

STAT-MECHNov 17, 2020
Dynamical large deviations of two-dimensional kinetically constrained models using a neural-network state ansatz

Corneel Casert, Tom Vieijra, Stephen Whitelam et al.

We use a neural network ansatz originally designed for the variational optimization of quantum systems to study dynamical large deviations in classical ones. We obtain the scaled cumulant-generating function for the dynamical activity of the Fredrickson-Andersen model, a prototypical kinetically constrained model, in one and two dimensions, and present the first size-scaling analysis of the dynamical activity in two dimensions. These results provide a new route to the study of dynamical large-deviation functions, and highlight the broad applicability of the neural-network state ansatz across domains in physics.