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Summations by parton showers of large logarithms in electron-positron annihilation

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arxiv 2011.04777 v2 pith:O7JEN577 submitted 2020-11-09 hep-ph

Summations by parton showers of large logarithms in electron-positron annihilation

classification hep-ph
keywords distributionpartonshowerannihilationelectron-positronlargelogarithmsalgorithms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In a companion publication, we have explored how to examine the summation of large logarithms in a parton shower. Here, we apply this general program to the thrust distribution in electron-positron annihilation, using several shower algorithms. The method is to work with an appropriate integral transform of the distribution for the observable of interest. Then, we reformulate the parton shower calculation so as to obtain the transformed distribution as an exponential for which we can compute the terms in the perturbative expansion of the exponent.

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