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Self-contained definition of the Collins-Soper kernel

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arxiv 2003.02288 v2 pith:M4JAVF5K submitted 2020-03-04 hep-ph hep-th

Self-contained definition of the Collins-Soper kernel

classification hep-ph hep-th
keywords definitionpropertiescollins-soperkernelself-containedsideanomalousanother
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The rapidity anomalous dimension (RAD), or Collins-Soper kernel, defines the scaling properties of transverse momentum dependent distributions and can be extracted from the experimental data. I derive a self-contained nonperturbative definition that represents RAD without reference to a particular process. This definition makes possible exploration of the properties of RAD by theoretical methods on one side, and the properties of QCD vacuum with collider measurements on another side. To demonstrate these possibilities, I compute the power correction to RAD, its large-b asymptotic, and compare these estimations with recent phenomenological extractions.

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Cited by 3 Pith papers

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