Skip to yearly menu bar Skip to main content


Poster

Copula-like Variational Inference

Marcel Hirt · Petros Dellaportas · Alain Durmus

East Exhibition Hall B, C #165

Keywords: [ Probabilistic Methods ] [ Variational Inference ]


Abstract:

This paper considers a new family of variational distributions motivated by Sklar's theorem. This family is based on new copula-like densities on the hypercube with non-uniform marginals which can be sampled efficiently, i.e. with a complexity linear in the dimension d of the state space. Then, the proposed variational densities that we suggest can be seen as arising from these copula-like densities used as base distributions on the hypercube with Gaussian quantile functions and sparse rotation matrices as normalizing flows. The latter correspond to a rotation of the marginals with complexity O(d log d). We provide some empirical evidence that such a variational family can also approximate non-Gaussian posteriors and can be beneficial compared to Gaussian approximations. Our method performs largely comparably to state-of-the-art variational approximations on standard regression and classification benchmarks for Bayesian Neural Networks.

Live content is unavailable. Log in and register to view live content