Search Results for author: Sebastian Pina-Otey

Found 4 papers, 1 papers with code

Funnels: Exact maximum likelihood with dimensionality reduction

1 code implementation15 Dec 2021 Samuel Klein, John A. Raine, Sebastian Pina-Otey, Slava Voloshynovskiy, Tobias Golling

Normalizing flows are diffeomorphic, typically dimension-preserving, models trained using the likelihood of the model.

Dimensionality Reduction

Exhaustive Neural Importance Sampling applied to Monte Carlo event generation

no code implementations26 May 2020 Sebastian Pina-Otey, Federico Sánchez, Thorsten Lux, Vicens Gaitan

The generation of accurate neutrino-nucleus cross-section models needed for neutrino oscillation experiments require simultaneously the description of many degrees of freedom and precise calculations to model nuclear responses.

Efficient sampling generation from explicit densities via Normalizing Flows

no code implementations23 Mar 2020 Sebastian Pina-Otey, Thorsten Lux, Federico Sánchez, Vicens Gaitan

For many applications, such as computing the expected value of different magnitudes, sampling from a known probability density function, the target density, is crucial but challenging through the inverse transform.

Likelihood-free inference of experimental Neutrino Oscillations using Neural Spline Flows

no code implementations21 Feb 2020 Sebastian Pina-Otey, Federico Sánchez, Vicens Gaitan, Thorsten Lux

In machine learning, likelihood-free inference refers to the task of performing an analysis driven by data instead of an analytical expression.

BIG-bench Machine Learning Density Estimation

Cannot find the paper you are looking for? You can Submit a new open access paper.