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Symmetries and Generalisations of Tri-Bimaximal Neutrino Mixing
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Symmetries and Generalisations of Tri-Bimaximal Neutrino Mixing
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Tri-bimaximal mixing is a specific lepton mixing ansatz, which has been shown to account very successfully for the established neutrino oscillation data. Working in a particular basis (the `circulant basis'), we identify three independent symmetries of tri-bimaximal mixing, which we exploit to set the tri-bimaximal hypothesis in context, alongside some simple, phenomenologically interesting CP-conserving and CP-violating generalisations.
Forward citations
Cited by 4 Pith papers
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