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BOOST 2024 - 16th International Workshop on Boosted Object Phenomenology, Reconstruction, Measurements, and Searches at Colliders

July 29, 2024 to August 2, 2024
Genova, Italy
Europe/Rome timezone
  • Overview
  • Scientific Program
  • Abstracts for talks and posters
    • Registration
    • Timetable
    • Zoom connection
    • Confirmed invited speakers
    • How to get to Genova
    • Once you are in Genova
    • Organising Committees
    • BOOST Community Values
    • Science is Cool (SCOOL)
    • Contribution List
    • Participant List
    • Health and Safety
    • Copyright Disclaimer
    • Pictures

    Contact

    • boost2024-loc@ge.infn.it

    Details for Allison Deiana

    Author in the following contributions

    • Determination of Higgs boson properties and searches for new resonances using highly boosted objects with the ATLAS experiment
    • Top-quark jet substructure measured with the ATLAS detector
    • Searches for boosted resonances (non-diboson) and semi-visible jets with the ATLAS detector
    • Jet substructure in heavy ion collisions with ATLAS
    • Jet substructure measurements in multijet production with the ATLAS experiment
    • Measurements of W and Z boson production in association with jets in ATLAS
    • Classifying hadronic objects in ATLAS with ML/AI algorithms
    • Jet Energy Scale Uncertainty using Single Particle Response Measurements
    • Performance and Uncertainty of Boost Top Taggers in ATLAS
    • Turning noise into data: using pileup for physics
    • pTmiss reconstruction and performance with Run-2 and Run-3 data at the ATLAS experiment
    • Boosted H->bb tagging searches
    • Flavour Tagging with Graph Neural Network with the ATLAS Detector
    • New techniques for reconstructing and calibrating hadronic objects with ATLAS
    • Searches for new physics using unsupervised machine learning for anomaly detection in $\sqrt{s}$ = 13 TeV $pp$ collisions recorded by the ATLAS detector at the LHC
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