Topic of the Week
Tuesday, July 11, 2017 -
3:00 PM
Monday, July 10, 2017
Tuesday, July 11, 2017
3:00 PM
How much information is in a jet?
-
Andrew Larkoski
(
Massachusetts Institute of Technology
)
Andrew Larkoski
(
Reed Collge
)
Andrew Larkoski
(
Harvard University
)
Andrew Larkoski
(
SLAC
)
How much information is in a jet?
Andrew Larkoski
(
Massachusetts Institute of Technology
)
Andrew Larkoski
(
Reed Collge
)
Andrew Larkoski
(
Harvard University
)
Andrew Larkoski
(
SLAC
)
3:00 PM - 4:00 PM
Room: Sunrise - WH11NE
Machine learning techniques are increasingly being applied toward data analyses at the Large Hadron Collider, especially with applications for discrimination of jets with different originating particles. In this talk, I will review machine learning at the LHC and discuss a systematic and constructive approach to extracting the information necessary for discrimination. By measuring observables on jets that completely and minimally span N-body phase space, we are able to reduce the problem in a controlled and theoretically well-defined way. For the application of discrimination of QCD jets versus boosted hadronically-decaying Z bosons, we show that discrimination power is saturated by only considering observables that are sensitive to 4-body (8 dimensional) phase space.