Search Results for author: Juan Pavez

Found 7 papers, 4 papers with code

Effective LHC measurements with matrix elements and machine learning

no code implementations4 Jun 2019 Johann Brehmer, Kyle Cranmer, Irina Espejo, Felix Kling, Gilles Louppe, Juan Pavez

One major challenge for the legacy measurements at the LHC is that the likelihood function is not tractable when the collected data is high-dimensional and the detector response has to be modeled.

BIG-bench Machine Learning Density Estimation

Working Memory Networks: Augmenting Memory Networks with a Relational Reasoning Module

no code implementations ACL 2018 Juan Pavez, Héctor Allende, Héctor Allende-Cid

During the last years, there has been a lot of interest in achieving some kind of complex reasoning using deep neural networks.

Relational Reasoning

A Guide to Constraining Effective Field Theories with Machine Learning

2 code implementations30 Apr 2018 Johann Brehmer, Kyle Cranmer, Gilles Louppe, Juan Pavez

We develop, discuss, and compare several inference techniques to constrain theory parameters in collider experiments.

BIG-bench Machine Learning

Constraining Effective Field Theories with Machine Learning

1 code implementation30 Apr 2018 Johann Brehmer, Kyle Cranmer, Gilles Louppe, Juan Pavez

We present powerful new analysis techniques to constrain effective field theories at the LHC.

BIG-bench Machine Learning

Approximating Likelihood Ratios with Calibrated Discriminative Classifiers

2 code implementations6 Jun 2015 Kyle Cranmer, Juan Pavez, Gilles Louppe

This leads to a new machine learning-based approach to likelihood-free inference that is complementary to Approximate Bayesian Computation, and which does not require a prior on the model parameters.

Dimensionality Reduction

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