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Automated mass spectrum generation for new physics

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arxiv 1301.5932 v2 pith:HWYCJEEM submitted 2013-01-24 hep-ph

Automated mass spectrum generation for new physics

classification hep-ph
keywords modelgenerationmassfeynrulesfieldmatricesminimalpackage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We describe an extension of the FeynRules package dedicated to the automatic generation of the mass spectrum associated with any Lagrangian-based quantum field theory. After introducing a simplified way to implement particle mixings, we present a new class of FeynRules functions allowing both for the analytical computation of all the model mass matrices and for the generation of a C++ package, dubbed ASperGe. This program can then be further employed for a numerical evaluation of the rotation matrices necessary to diagonalize the field basis. We illustrate these features in the context of the Two-Higgs-Doublet Model, the Minimal Left-Right Symmetric Standard Model and the Minimal Supersymmetric Standard Model.

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