Applications of normalizing flows to the sampling of field configuration...
Skip connections and normalisation layers form two standard architectura...
Recent applications of machine-learned normalizing flows to sampling in
...
Training very deep neural networks is still an extremely challenging tas...
A recently proposed class of models attempts to learn latent dynamics fr...
Learning dynamics is at the heart of many important applications of mach...
The Fermionic Neural Network (FermiNet) is a recently-developed neural
n...
We present a novel nonparametric algorithm for symmetry-based disentangl...
The Hamiltonian formalism plays a central role in classical and quantum
...
We introduce the Kronecker factored online Laplace approximation for
ove...
We present an efficient block-diagonal ap- proximation to the Gauss-Newt...
We present a unifying framework for adapting the update direction in
gra...
We consider training probabilistic classifiers in the case of a large nu...