International audienceBuilding on the recent trend of new deep generative models known as Normalizing Flows (NF), simulation-based inference (SBI) algorithms can now efficiently accommodate arbitrary complex and high-dimensional data distributions. The development of appropriate validation methods however has fallen behind. Indeed, most of the existing metrics either require access to the true posterior distribution, or fail to provide theoretical guarantees on the consistency of the inferred approximation beyond the one-dimensional setting. This work proposes easy to interpret validation diagnostics for multi-dimensional conditional (posterior) density estimators based on NF. It also offers theoretical guarantees based on results of local ...
Computational neuroscience relies on simulations of neural network models to bridge the gap between ...
Normalizing Flows (NF) are Generative models which are particularly robust and allow for exact sampl...
The vast majority of modern machine learning targets prediction problems, with algorithms such as De...
International audienceBuilding on the recent trend of new deep generative models known as Normalizin...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
Normalizing flows is a promising avenue in both density estimation and variational inference, which ...
peer reviewedInferring the parameters of a stochastic model based on experimental observations is ce...
Normalizing Flows (NFs) are emerging as a powerful class of generative models, as they not only allo...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...
A desirable property for any empirical model is the ability to generalise well throughout the models...
Normalizing flows provide an elegant approach to generative modeling that allows for efficient sampl...
Modeling real-world distributions can often be challenging due to sample data that are subjected to ...
Uncertainty quantification in ill-posed inverse problems is a critical issue in a variety of scienti...
A normalizing flow is an invertible mapping between an arbitrary probability distribution and a stan...
Item does not contain fulltextThe automation of probabilistic reasoning is one of the primary aims o...
Computational neuroscience relies on simulations of neural network models to bridge the gap between ...
Normalizing Flows (NF) are Generative models which are particularly robust and allow for exact sampl...
The vast majority of modern machine learning targets prediction problems, with algorithms such as De...
International audienceBuilding on the recent trend of new deep generative models known as Normalizin...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
Normalizing flows is a promising avenue in both density estimation and variational inference, which ...
peer reviewedInferring the parameters of a stochastic model based on experimental observations is ce...
Normalizing Flows (NFs) are emerging as a powerful class of generative models, as they not only allo...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...
A desirable property for any empirical model is the ability to generalise well throughout the models...
Normalizing flows provide an elegant approach to generative modeling that allows for efficient sampl...
Modeling real-world distributions can often be challenging due to sample data that are subjected to ...
Uncertainty quantification in ill-posed inverse problems is a critical issue in a variety of scienti...
A normalizing flow is an invertible mapping between an arbitrary probability distribution and a stan...
Item does not contain fulltextThe automation of probabilistic reasoning is one of the primary aims o...
Computational neuroscience relies on simulations of neural network models to bridge the gap between ...
Normalizing Flows (NF) are Generative models which are particularly robust and allow for exact sampl...
The vast majority of modern machine learning targets prediction problems, with algorithms such as De...