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arxiv: 1612.00312 · v1 · pith:KJ7RR5EVnew · submitted 2016-11-30 · ⚛️ physics.data-an · nucl-ex· stat.ML

Classifiers for centrality determination in proton-nucleus and nucleus-nucleus collisions

classification ⚛️ physics.data-an nucl-exstat.ML
keywords centralityclassifierscollisioncollisionsdatadetectordeterminationimpact
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Centrality, as a geometrical property of the collision, is crucial for the physical interpretation of nucleus-nucleus and proton-nucleus experimental data. However, it cannot be directly accessed in event-by-event data analysis. Common methods for centrality estimation in A-A and p-A collisions usually rely on a single detector (either on the signal in zero-degree calorimeters or on the multiplicity in some semi-central rapidity range). In the present work, we made an attempt to develop an approach for centrality determination that is based on machine-learning techniques and utilizes information from several detector subsystems simultaneously. Different event classifiers are suggested and evaluated for their selectivity power in terms of the number of nucleons-participants and the impact parameter of the collision. Finer centrality resolution may allow to reduce impact from so-called volume fluctuations on physical observables being studied in heavy-ion experiments like ALICE at the LHC and fixed target experiment NA61/SHINE on SPS.

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