Joint Track Functions: Expanding the Space of Calculable Correlations at Colliders
Kyle Lee, Ian Moult

TL;DR
This paper introduces joint track functions and factorization theorems for energy correlations involving hadrons with different quantum numbers, expanding calculable observables at colliders and enabling new insights into collision dynamics.
Contribution
It extends the track function formalism to joint track functions for multiple quantum numbers, deriving new factorization theorems for energy correlations in collider physics.
Findings
Derived factorization theorems for quantum-number-specific energy correlations
Extracted joint track functions from Monte Carlo simulations
Proposed a C-odd energy flux detector with distinct scaling behavior
Abstract
The theoretical description of observables at collider experiments relies on factorization theorems separating perturbative dynamics from universal non-perturbative matrix elements. Despite significant recent progress in extending these factorization theorems to increasingly differential jet substructure observables, the focus has been primarily on infrared safe observables sensitive only to correlations in the energy of final state hadrons. However, significant information about the dynamics of the underlying collision is encoded in how energy is correlated between hadrons of different quantum numbers. In this paper we extend the class of calculable correlations by deriving factorization theorems for a broad class of correlations, , between the energy flux carried by hadrons specified by quantum numbers, $R_1,…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Quantum Chromodynamics and Particle Interactions · High-Energy Particle Collisions Research
