Normalizing Flows (NFs) are emerging as a powerful class of generative models, as they not only allow for efficient sampling, but also deliver, by construction, density estimation. They are of great potential usage in High Energy Physics (HEP), where complex high dimensional data and probability distributions are everyday's meal. However, in order to fully leverage the potential of NFs it is crucial to explore their robustness as data dimensionality increases. Thus, in this contribution, we discuss the performances of some of the most popular types of NFs on the market, on some toy data sets with increasing number of dimensions.Comment: 6 pages, Proceedings of the 20th International Workshop on Advanced Computing and Analysis Techniques i...
Simulations play a key role for inference in collider physics. We explore various approaches for enh...
We propose a general purpose Bayesian inference algorithm for expensive likelihoods, replacing the s...
Modeling real-world distributions can often be challenging due to sample data that are subjected to ...
Normalizing flows is a promising avenue in both density estimation and variational inference, which ...
Normalizing flows provide an elegant approach to generative modeling that allows for efficient sampl...
Normalizing flows model a complex target distribution in terms of a bijective transform operating on...
Normalizing Flows (NFs) are able to model complicated distributions p(y) with strong inter-dimension...
Normalizing flows have recently been applied to the problem of accelerating Markov chains in lattice...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...
Building on the recent trend of new deep generative models known as Normalizing Flows (NF), simulati...
Normalizing Flows (NFs) have gathered significant attention from the academic commu nity as a means ...
Normalizing flows are a class of deep generative models that provide a promising route to sample lat...
Normalizing flows are a popular approach for constructing probabilistic and generative models. Howev...
The two key characteristics of a normalizing flow is that it is invertible (in particular, dimension...
Normalizing flow (NF) has gained popularity over traditional maximum likelihood based methods due to...
Simulations play a key role for inference in collider physics. We explore various approaches for enh...
We propose a general purpose Bayesian inference algorithm for expensive likelihoods, replacing the s...
Modeling real-world distributions can often be challenging due to sample data that are subjected to ...
Normalizing flows is a promising avenue in both density estimation and variational inference, which ...
Normalizing flows provide an elegant approach to generative modeling that allows for efficient sampl...
Normalizing flows model a complex target distribution in terms of a bijective transform operating on...
Normalizing Flows (NFs) are able to model complicated distributions p(y) with strong inter-dimension...
Normalizing flows have recently been applied to the problem of accelerating Markov chains in lattice...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...
Building on the recent trend of new deep generative models known as Normalizing Flows (NF), simulati...
Normalizing Flows (NFs) have gathered significant attention from the academic commu nity as a means ...
Normalizing flows are a class of deep generative models that provide a promising route to sample lat...
Normalizing flows are a popular approach for constructing probabilistic and generative models. Howev...
The two key characteristics of a normalizing flow is that it is invertible (in particular, dimension...
Normalizing flow (NF) has gained popularity over traditional maximum likelihood based methods due to...
Simulations play a key role for inference in collider physics. We explore various approaches for enh...
We propose a general purpose Bayesian inference algorithm for expensive likelihoods, replacing the s...
Modeling real-world distributions can often be challenging due to sample data that are subjected to ...