Physics:Quantum data analysis/Event Measurements: Difference between revisions

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{{Short description|Event Measurements in particle-physics data analysis}}
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'''Event measurements''' are the reconstructed quantities extracted from a single collision or from a selected ensemble of collisions. They include object momenta, charges, particle-identification values, vertices, missing momentum, event shapes, multiplicities, trigger decisions, and quality flags. These measurements are the immediate inputs to selections, histograms, fits, and physics interpretations.<ref name="leo">{{cite book |last=Leo |first=William R. |title=Techniques for Nuclear and Particle Physics Experiments |publisher=Springer |year=1994 |isbn=978-3-540-57280-0}}</ref>
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[[File:Quantum_data_analysis_event_measurements_yellow.png|thumb|280px|Event Measurements represented as a compact particle-physics data analysis workflow.]]
[[File:Quantum_data_analysis_event_measurements_yellow.png|thumb|280px|Event measurements represented as reconstructed quantities from a collision event.]]
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== From signals to objects ==
Detector signals are converted into reconstructed objects such as tracks, clusters, jets, leptons, photons, vertices, and missing transverse momentum. Each object carries calibration, resolution, and identification information.<ref name="leo">{{cite book |last=Leo |first=William R. |title=Techniques for Nuclear and Particle Physics Experiments |publisher=Springer |year=1994 |isbn=978-3-540-57280-0}}</ref>
== Event-level variables ==
Event-level variables summarize the topology of a collision. Examples include invariant masses, scalar energy sums, angular separations, missing momentum, multiplicities, and quality requirements.<ref name="pdg2024">{{cite journal |collaboration=Particle Data Group |title=Review of Particle Physics |journal=Physical Review D |volume=110 |issue=3 |pages=030001 |year=2024 |doi=10.1103/PhysRevD.110.030001}}</ref>
== Uncertainty propagation ==
Event measurements must propagate detector uncertainties and correlations into final distributions. Object-level calibrations can affect selections, background estimates, and fitted parameters.<ref name="cowan">{{cite book |last=Cowan |first=Glen |title=Statistical Data Analysis |publisher=Oxford University Press |year=1998 |isbn=978-0-19-850156-5}}</ref>


=See also=
=See also=

Revision as of 20:58, 19 May 2026


Event measurements are the reconstructed quantities extracted from a single collision or from a selected ensemble of collisions. They include object momenta, charges, particle-identification values, vertices, missing momentum, event shapes, multiplicities, trigger decisions, and quality flags. These measurements are the immediate inputs to selections, histograms, fits, and physics interpretations.[1]

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Event measurements represented as reconstructed quantities from a collision event.

From signals to objects

Detector signals are converted into reconstructed objects such as tracks, clusters, jets, leptons, photons, vertices, and missing transverse momentum. Each object carries calibration, resolution, and identification information.[1]

Event-level variables

Event-level variables summarize the topology of a collision. Examples include invariant masses, scalar energy sums, angular separations, missing momentum, multiplicities, and quality requirements.[2]

Uncertainty propagation

Event measurements must propagate detector uncertainties and correlations into final distributions. Object-level calibrations can affect selections, background estimates, and fitted parameters.[3]

See also

Table of contents (60 articles)

Index

Full contents

15. Machine Learning (1) Back to index

References

  1. 1.0 1.1 Leo, William R. (1994). Techniques for Nuclear and Particle Physics Experiments. Springer. ISBN 978-3-540-57280-0. 
  2. "Review of Particle Physics". Physical Review D 110 (3): 030001. 2024. doi:10.1103/PhysRevD.110.030001. 
  3. Cowan, Glen (1998). Statistical Data Analysis. Oxford University Press. ISBN 978-0-19-850156-5. 
Author: Sergei V. Chekanov
Author: Claude Pruneau
Author: Harold Foppele

Source attribution: Physics:Quantum data analysis/Event Measurements