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The TaNC algorithm has been optimized for the early stages of LHC operation.
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The quality selections applied by the decay mode reconstruction algorithm will
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need to be re--tuned and the neural networks retrained after each significant
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change in instantaneous luminosity to remove the effects of multiple
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interactions in the same bunch crossing, and after collision energy changes due
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to the increased energy of the multiple scattering events.
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The dependence of the algorithm on the robustness of Monte
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Carlo simulations can be minimized by using real events as the background
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training sample. As the QCD di--jet production rate is many orders of magnitude
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larger than that of tau leptons, it is relatively straightforward to obtain a
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pure background training sample with early CMS datasets.
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The relatively long lifetime of the tau lepton ($c\tau = 87\mu$m) permits the
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possibility that using displaced decay vertex information could provide
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discrimination power against quark and gluon jets, which are expected to be
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produced at the primary vertex. A feasibility study is planned to determine if
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adding vertex related observables to the neural networks could improve the
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performance of the TaNC.
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