Experimental studies of unbiased gluon jets from e+e- annihilations using the jet boost algorithm
The OPAL collaboration, G. Abbiendi, et al

TL;DR
This study introduces and validates a jet boost algorithm to obtain unbiased gluon jet samples from e+e- collisions, enabling precise measurements of their properties and testing QCD predictions across a range of energies.
Contribution
The paper presents the first experimental application of the jet boost algorithm to measure unbiased gluon jet characteristics in e+e- annihilations, validating its accuracy with Monte Carlo simulations.
Findings
Jet boost algorithm accurately measures gluon jet multiplicity for energies >5 GeV.
Fragmentation functions are reliably measured for jet energies >14 GeV.
QCD predictions agree with measured distributions at higher energies, with some discrepancies at lower energies.
Abstract
We present the first experimental results based on the jet boost algorithm, a technique to select unbiased samples of gluon jets in e+e- annihilations, i.e. gluon jets free of biases introduced by event selection or jet finding criteria. Our results are derived from hadronic Z0 decays observed with the OPAL detector at the LEP e+e- collider at CERN. First, we test the boost algorithm through studies with Herwig Monte Carlo events and find that it provides accurate measurements of the charged particle multiplicity distributions of unbiased gluon jets for jet energies larger than about 5 GeV, and of the jet particle energy spectra (fragmentation functions) for jet energies larger than about 14 GeV. Second, we apply the boost algorithm to our data to derive unbiased measurements of the gluon jet multiplicity distribution for energies between about 5 and 18 GeV, and of the gluon jet…
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