Polarization Transfer Observables in Elastic Electron Proton Scattering at $Q^2 = $2.5, 5.2, 6.8, and 8.5 GeV$^2$
A. J. R. Puckett, E. J. Brash, M. K. Jones, W. Luo, M., Meziane, L. Pentchev, C. F. Perdrisat, V. Punjabi, F. R., Wesselmann, A. Afanasev, A. Ahmidouch, I. Albayrak, K. A. Aniol, and J. Arrington, A. Asaturyan, H. Baghdasaryan, F. Benmokhtar and, W. Bertozzi, L. Bimbot

TL;DR
This paper reanalyzes polarization transfer data from elastic electron-proton scattering at high Q^2, confirming the continued decrease of the form factor ratio and exploring effects beyond the Born approximation with improved precision.
Contribution
It provides an expanded description and final reanalysis of Jefferson Lab experiments, including unpublished data, with improved uncertainties and insights into polarization transfer observables at high Q^2.
Findings
The form factor ratio G_E^p/G_M^p decreases with Q^2 up to 8.5 GeV^2.
No significant epsilon dependence of the ratio at Q^2=2.5 GeV^2.
A 1.4% enhancement in polarization transfer component ratio at high epsilon.
Abstract
The GEp-III and GEp-2 experiments were carried out in Jefferson Lab's (JLab's) Hall C from 2007-2008, to extend the knowledge of to the highest practically achievable and to search for effects beyond the Born approximation in polarization transfer observables of elastic scattering. This article reports an expanded description of the common experimental apparatus and data analysis procedure, and the results of a final reanalysis of the data from both experiments, including the previously unpublished results of the full-acceptance data of the GEp-2 experiment. The Hall C High Momentum Spectrometer detected and measured the polarization of protons recoiling elastically from collisions of JLab's polarized electron beam with a liquid hydrogen target. A large-acceptance electromagnetic calorimeter detected the elastically scattered electrons in…
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