Classification without labels: learning from mixed samples in high energy physics
Abstract Modern machine learning techniques can be used to construct powerful models for difficult collider physics problems. In many applications, however, these models are trained on imperfect simulations due to a lack of truth-level information in the data, which risks the model learning artifact...
Main Authors: | Eric M. Metodiev, Benjamin Nachman, Jesse Thaler |
---|---|
Format: | Article |
Language: | English |
Published: |
SpringerOpen
2017-10-01
|
Series: | Journal of High Energy Physics |
Subjects: | |
Online Access: | http://link.springer.com/article/10.1007/JHEP10(2017)174 |
Similar Items
-
Classification without labels: learning from mixed samples in high energy physics
by: Nachman, Benjamin, et al.
Published: (2018) -
Classification without labels: learning from mixed samples in high energy physics
by: Nachman, Benjamin, et al.
Published: (2017) -
Weakly supervised classification in high energy physics
by: Lucio Mwinmaarong Dery, et al.
Published: (2017-05-01) -
Energy flow networks: deep sets for particle jets
by: Patrick T. Komiske, et al.
Published: (2019-01-01) -
Energy flow polynomials: a complete linear basis for jet substructure
by: Patrick T. Komiske, et al.
Published: (2018-04-01)