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Posts Tagged ‘machine-learning’


NPP Seminar by Corey James (ANL)

November 2nd, 2021 by geurts

Date: Tuesday Nov. 2, 2021 at 4pm
Location: online

Title: Machine Learning and Deep Learning in the NEXT Neutrinoless Double Beta Decay Experiment
Speaker: Corey James (ANL)

Abstract

In the search for experimental observation of neutrinoless double beta decay, the Neutrino Experiment with a Xenon TPC (NEXT) program seeks to leverage both state of the art energy resolution as well as high resolution topological discrimination to separate double beta decay candidates from radiogenic and other backgrounds. In this talk, I will describe the NEXT Program and highlight it’s use of artificial intelligence and machine learning techniques to search for neutrinoless double beta decay.

NPP Seminar by Melissa Quinnan (UCSB)

October 15th, 2021 by geurts

Date: Tuesday Oct. 19, 2021 at 4pm
Location: online

Title: Standard Model Four-Top Production with the CMS Detector (Run II)
Speaker: Melissa Quinnan (UCSB)

Abstract

Standard model four top quark production is a rare process with great potential to reveal new physics. Measurement of the cross section is not only a direct probe of the top quark Yukawa coupling with the Higgs, but an enhancement of this cross section is predicted by several beyond the standard model (BSM) theories. This process is studied in fully-hadronic proton-proton collision events collected during Run II of the CERN LHC by the CMS detector, which corresponded to an integrated luminosity of 137fb−1 and a center of mass energy of 13TeV. In order to optimize signal sensitivity with respect to significant and challenging backgrounds, several novel machine-learning based tools are applied in a multi-step and data-driven approach. Boosted decision tree (BDT) and deep neural net (DNN) based hadronic top taggers are used to identify hadronically decaying top quark candidates with moderate and high transverse momenta, respectively, in order to suppress backgrounds and categorize events by the multiplicity of reconstructed top tags, and an event-level kinematic BDT distribution is subsequently used to extract the signal. Control regions inspired by the “ABCD” method are used to obtain a data-driven estimate of the background, and data distributions in these control regions are given as inputs to a DNN in order to estimate the event-level BDT discriminant distributions of the major backgrounds. In combination with searches in other decay modes the expected significance of this analysis is estimated to reach at least 3 standard deviations, corresponding to the “evidence” of standard model four top production.

NPP Seminar by Taylor Faucett (UCI)

January 25th, 2021 by geurts

Date: Wednesday January  27, 2021 at 2pm
Location: online (YouTube)

Title: Physicists Learning from Machines Learning
Speaker: Taylor Faucett (UCI)

Abstract

Machine Learning methods are extremely powerful but often function as black-box problem solvers, providing improved performance at the expense of clarity. Our work describes a new machine learning approach which translates the strategy of a deep neural network into simple functions that are meaningful and intelligible to the physicist, without sacrificing performance improvements. We apply this approach to benchmark high-energy problems of fat-jet classification and electron identification. In each case, we find simple new observables which provide additional classification power and novel insights into the nature of the problem.

NPP Seminar by Daniel Whiteson (University of Chicago)

February 14th, 2018 by geurts

Date: Friday February 23, 2018  at 3pm
Location: 223 Herman Brown Hall, Rice University

Title: Deep Learning in High Energy Physics
Speaker: Daniel Whiteson (University of Chicago)

Abstract:Recent advances in artificial intelligence offer opportunities to disrupt the traditional techniques for data analysis in high energy physics. I will describe the new machine learning techniques, explain why they are particularly well suited for particle physics, and present selected results that demonstrate their new capabilities.