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Late-time transition of MBM_BMB​ inferred via neural networks

16 February 2024
Purba Mukherjee
K. Dialektopoulos
J. Said
J. Mifsud
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Abstract

The strengthening of tensions in the cosmological parameters has led to a reconsideration of fundamental aspects of standard cosmology. The tension in the Hubble constant can also be viewed as a tension between local and early Universe constraints on the absolute magnitude MBM_BMB​ of Type Ia supernova. In this work, we reconsider the possibility of a variation of this parameter in a model-independent way. We employ neural networks to agnostically constrain the value of the absolute magnitude as well as assess the impact and statistical significance of a variation in MBM_BMB​ with redshift from the Pantheon+ compilation, together with a thorough analysis of the neural network architecture. We find an indication for a transition redshift at the z≈1z\approx 1z≈1 region.

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