International audienceBefore any publication, data analysis of high-energy physics experiments must be validated. This validation is granted only if a perfect understanding of the data and the analysis process is demonstrated. Therefore, physicists prefer using transparent machine learning algorithms whose performances highly rely on the suitability of the provided input features. To transform the feature space, feature construction aims at automatically generating new relevant features. Whereas most of previous works in this area perform the feature construction prior to the model training, we propose here a general framework to embed a feature construction technique adapted to the constraints of high-energy physics in the induction of tre...
Constraining the parameters of physical models with $$>5-10$$ parameters is a widespread problem in ...
International audienceMachine learning algorithms are growing increasingly popular in particle physi...
Our knowledge of the fundamental particles of nature and their interactions is summarized by the sta...
International audienceBefore any publication, data analysis of high-energy physics experiments must ...
This document introduces basics in data preparation, feature selection and learning basics for high ...
Machine learning methods are now ubiquitous in physics, but often target objectives that are one or ...
International audienceThe Higgs boson discovery at the Large Hadron Collider in 2012 relied on boost...
© 2020 Jia Tian Justin TanIn searches for new physics in high-energy physics, experimental analyses ...
High-energy-density physics is the field of physics concerned with studying matter at extremely high...
Searching for new physics, i.e., physical laws that go beyond the reference models, is the absolute ...
This work presents techniques for addressing the black box problem for deep learning in high-energy ...
In this talk we will survey some of the latest developments in machine learning research through the...
Contains fulltext : 238578.pdf (Publisher’s version ) (Open Access)Science concern...
© Published under licence by IOP Publishing Ltd. Machine learning is an important applied research a...
In this talk, I will discuss machine learning tasks used in high energy physics. I will talk about s...
Constraining the parameters of physical models with $$>5-10$$ parameters is a widespread problem in ...
International audienceMachine learning algorithms are growing increasingly popular in particle physi...
Our knowledge of the fundamental particles of nature and their interactions is summarized by the sta...
International audienceBefore any publication, data analysis of high-energy physics experiments must ...
This document introduces basics in data preparation, feature selection and learning basics for high ...
Machine learning methods are now ubiquitous in physics, but often target objectives that are one or ...
International audienceThe Higgs boson discovery at the Large Hadron Collider in 2012 relied on boost...
© 2020 Jia Tian Justin TanIn searches for new physics in high-energy physics, experimental analyses ...
High-energy-density physics is the field of physics concerned with studying matter at extremely high...
Searching for new physics, i.e., physical laws that go beyond the reference models, is the absolute ...
This work presents techniques for addressing the black box problem for deep learning in high-energy ...
In this talk we will survey some of the latest developments in machine learning research through the...
Contains fulltext : 238578.pdf (Publisher’s version ) (Open Access)Science concern...
© Published under licence by IOP Publishing Ltd. Machine learning is an important applied research a...
In this talk, I will discuss machine learning tasks used in high energy physics. I will talk about s...
Constraining the parameters of physical models with $$>5-10$$ parameters is a widespread problem in ...
International audienceMachine learning algorithms are growing increasingly popular in particle physi...
Our knowledge of the fundamental particles of nature and their interactions is summarized by the sta...