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CERN Accelerating science

Talk
Title Advanced Machine Learning for Classification, Regression, and Generation in Jet Physics
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Author(s) Nachman, Ben (speaker) (Lawrence Berkeley National Lab. (US))
Corporate author(s) CERN. Geneva
Imprint 2017-11-15. - Streaming video.
Series (EP-IT Data science seminars)
Lecture note on 2017-11-15T11:00:00
Subject category EP-IT Data science seminars
Abstract

There is a deep connection between machine learning and jet physics - after all, jets are defined by unsupervised learning algorithms. Jet physics has been a driving force for studying modern machine learning in high energy physics. Domain specific challenges require new techniques to make full use of the algorithms. A key focus is on understanding how and what the algorithms learn. Modern machine learning techniques for jet physics are demonstrated for classification, regression, and generation. In addition to providing powerful baseline performance, we show how to train complex models directly on data and to generate sparse stacked images with non-uniform granularity.

Copyright/License © 2017-2024 CERN
Submitted by maurizio.pierini@cern.ch

 


 Record created 2017-11-15, last modified 2022-11-02


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