2024
DOI: 10.1093/mnras/stae995
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SIDE-real: Supernova Ia Dust Extinction with truncated marginal neural ratio estimation applied to real data

Konstantin Karchev,
Matthew Grayling,
Benjamin M Boyd
et al.

Abstract: We present the first fully simulation-based hierarchical analysis of the light curves of a population of low-redshift type Ia supernov aelig; (SNaelig; Ia). Our hardware-accelerated forward model, released in the Python package slicsim, includes stochastic variations of each SN’s spectral flux distribution (based on the pre-trained BayeSN model), extinction from dust in the host and in the Milky Way, redshift, and realistic instrumental noise. By utilising truncated marginal neural ratio estimation (TMNRE), a … Show more

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