Finding a quantitative theory of neural network generalization has long ...
A deluge of recent work has explored equivalences between wide neural
ne...
Fitting probabilistic models to data is often difficult, due to the gene...
Despite the fact that the loss functions of deep neural networks are hig...
For the benefit of designing scalable, fault resistant optical neural
ne...
Numerically locating the critical points of non-convex surfaces is a
lon...
In most sampling algorithms, including Hamiltonian Monte Carlo, transiti...
The mutual information between stimulus and spike-train response is comm...