First global next-to-leading order determination of diffractive parton distribution functions and their uncertainties within the xFitter framework
Goharipour, M., Khanpour, H., & Guzey, V. (2018). First global next-to-leading order determination of diffractive parton distribution functions and their uncertainties within the xFitter framework. European Physical Journal C, 78(4), Article 309. https://doi.org/10.1140/epjc/s10052-018-5787-z
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2018Copyright
© the Authors, 2018. This is an open access article distributed under the terms of a Creative Commons License. Funded by SCOAP3.
We present GKG18-DPDFs, a next-to-leading
order (NLO) QCD analysis of diffractive parton distribution
functions (diffractive PDFs) and their uncertainties. This is
the first global set of diffractive PDFs determined within
the xFitter framework. This analysis is motivated by
all available and most up-to-date data on inclusive diffractive
deep inelastic scattering (diffractive DIS). Heavy quark
contributions are considered within the framework of the
Thorne–Roberts (TR) general mass variable flavor number
scheme (GM-VFNS). We form a mutually consistent set of
diffractive PDFs due to the inclusion of high-precision data
from H1/ZEUS combined inclusive diffractive cross sections
measurements. We study the impact of the H1/ZEUS combined
data by producing a variety of determinations based
on reduced data sets. We find that these data sets have a
significant impact on the diffractive PDFs with some substantial
reductions in uncertainties. The predictions based on
the extracted diffractive PDFs are compared to the analyzed
diffractive DIS data and with other determinations of the
diffractive PDFs.
...
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SpringerISSN Search the Publication Forum
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Except where otherwise noted, this item's license is described as © the Authors, 2018. This is an open access article distributed under the terms of a Creative Commons License. Funded by SCOAP3.
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