Model-independent extrapolation of MUonE data with Pad\'e and D-Log approximants
Abstract
The MUonE experiment is designed to extract the hadronic contribution to the electromagnetic coupling in the space-like region, α had(t), from elastic eμ scattering. The leading order hadronic vacuum polarization contribution to the muon g-2, aμHVP, \,LO, can then be obtained from a weighted integral over α had(t). This, however, requires knowledge of α had(t) in the whole domain of integration, which cannot be achieved by experiment. In this work, we propose to use Pad\'e and D-Log Pad\'e approximants as a systematic and model-independent method to fit and reliably extrapolate the future MUonE experimental data, extracting aμHVP,\,LO with a conservative but competitive uncertainty, using no, or very limited, external information. The method relies on fundamental analytic properties of the two-point correlator underlying aμHVP,\,LO and provides lower and upper bounds for the result for aμHVP,\,LO. We demonstrate the reliability of the method using toy data sets generated from a model for α had(t) reflecting the expected statistics of the MUonE experiment.
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