Development of a Machine Learning Based Analysis Chain for the Measurement of Atmospheric Muon Spectra with IceCube [IMA]

http://arxiv.org/abs/1701.04067


High-energy muons from air shower events detected in IceCube are selected using state of the art machine learning algorithms. Attributes to distinguish a HE-muon event from the background of low-energy muon bundles are selected using the mRMR algorithm and the events are classified by a random forest model. In a subsequent analysis step the obtained sample is used to reconstruct the atmospheric muon energy spectrum, using the unfolding software TRUEE. The reconstructed spectrum covers an energy range from $10^4\,$GeV to $10^6\,$GeV. The general analysis scheme is presented, including results using the first year of data taken with IceCube in its complete configuration with $86$ instrumented strings.

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T. Fuchs
Tue, 17 Jan 17
28/81

Comments: XXV ECRS 2016 Proceedings – eConf C16-09-04.3