Type Ia Supernova Light Curve Inference: Hierarchical Bayesian Analysis in the Near Infrared
Kaisey S. Mandel, W. Michael Wood-Vasey, Andrew S. Friedman, Robert P., Kirshner (Harvard-Smithsonian CfA)

TL;DR
This paper develops a hierarchical Bayesian framework to analyze Type Ia supernova near-infrared light curves, improving distance estimation accuracy and revealing correlations useful for cosmology.
Contribution
It introduces a novel hierarchical Bayesian model with an efficient MCMC algorithm for NIR supernova light curves, capturing intrinsic variations and correlations for better distance measurements.
Findings
Intrinsic variances in peak magnitudes are quantified.
First evidence of correlations between NIR magnitudes and light curve shapes.
Hubble residuals are reduced to 0.10 mag, demonstrating improved distance estimates.
Abstract
We present a comprehensive statistical analysis of the properties of Type Ia SN light curves in the near infrared using recent data from PAIRITEL and the literature. We construct a hierarchical Bayesian framework, incorporating several uncertainties including photometric error, peculiar velocities, dust extinction and intrinsic variations, for coherent statistical inference. SN Ia light curve inferences are drawn from the global posterior probability of parameters describing both individual supernovae and the population conditioned on the entire SN Ia NIR dataset. The logical structure of the hierarchical model is represented by a directed acyclic graph. Fully Bayesian analysis of the model and data is enabled by an efficient MCMC algorithm exploiting the conditional structure using Gibbs sampling. We apply this framework to the JHK_s SN Ia light curve data. A new light curve model…
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