Normalising flows are tractable probabilistic models that leverage the power of deep learning to describe a wide parametric family of distributions, all while remaining trainable using maximum likelihood. We discuss how these methods can be further improved based on insights from robust (in particular, resistant) statistics. Specifically, we propose to endow flow-based models with fat-tailed latent distributions such as multivariate Student's t, as a simple drop-in replacement for the Gaussian distribution used by conventional normalising flows. While robustness brings many advantages, this paper explores two of them: 1) We describe how using fatter-tailed base distributions can give benefits similar to gradient clipping, but without compro...
From the simplest models to complex deep neural networks, modeling turbulence with machine learning ...
The framework of normalizing flows provides a general strategy for flexible variational inference of...
The two key characteristics of a normalizing flow is that it is invertible (in particular, dimension...
Normalising flows are tractable probabilistic models that leverage the power of deep learning to des...
Normalizing flows is a promising avenue in both density estimation and variational inference, which ...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
One of the most notable distinctions between humans and most other animals is our ability to grow co...
Normalizing flows are a popular approach for constructing probabilistic and generative models. Howev...
European Symposium on Artificial Neural Networks, Computational Intelligence and Machine LearningInt...
We study a normalizing flow in the latent space of a top-down generator model, in which the normaliz...
Normalizing flows are constructed from a base distribution with a known density and a diffeomorphism...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...
Despite their impressive performance on large-scale benchmarks, machine learning sys- tems turn out ...
High dimensional probabilistic models are used for many modern scientific and engineering data analy...
Machine learning studies algorithms for learning from data. Probabilistic modeling and reasoning...
From the simplest models to complex deep neural networks, modeling turbulence with machine learning ...
The framework of normalizing flows provides a general strategy for flexible variational inference of...
The two key characteristics of a normalizing flow is that it is invertible (in particular, dimension...
Normalising flows are tractable probabilistic models that leverage the power of deep learning to des...
Normalizing flows is a promising avenue in both density estimation and variational inference, which ...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
One of the most notable distinctions between humans and most other animals is our ability to grow co...
Normalizing flows are a popular approach for constructing probabilistic and generative models. Howev...
European Symposium on Artificial Neural Networks, Computational Intelligence and Machine LearningInt...
We study a normalizing flow in the latent space of a top-down generator model, in which the normaliz...
Normalizing flows are constructed from a base distribution with a known density and a diffeomorphism...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...
Despite their impressive performance on large-scale benchmarks, machine learning sys- tems turn out ...
High dimensional probabilistic models are used for many modern scientific and engineering data analy...
Machine learning studies algorithms for learning from data. Probabilistic modeling and reasoning...
From the simplest models to complex deep neural networks, modeling turbulence with machine learning ...
The framework of normalizing flows provides a general strategy for flexible variational inference of...
The two key characteristics of a normalizing flow is that it is invertible (in particular, dimension...