TL;DR
This paper introduces a modular likelihood framework for spectroscopic inference that accounts for covariance and model mismatches, improving parameter uncertainty estimates and enabling data-driven spectral library corrections.
Contribution
It develops a novel covariance kernel formalism to handle spectral line mismatches and incorporates hierarchical fitting for data-driven spectral library improvements.
Findings
Accurately models covariance in high signal-to-noise spectra.
Addresses spectral line mismatch issues with local covariance kernels.
Demonstrates improved spectral fitting on stellar spectra.
Abstract
We present a modular, extensible likelihood framework for spectroscopic inference based on synthetic model spectra. The subtraction of an imperfect model from a continuously sampled spectrum introduces covariance between adjacent datapoints (pixels) into the residual spectrum. For the high signal-to-noise data with large spectral range that is commonly employed in stellar astrophysics, that covariant structure can lead to dramatically underestimated parameter uncertainties (and, in some cases, biases). We construct a likelihood function that accounts for the structure of the covariance matrix, utilizing the machinery of Gaussian process kernels. This framework specifically address the common problem of mismatches in model spectral line strengths (with respect to data) due to intrinsic model imperfections (e.g., in the atomic/molecular databases or opacity prescriptions) by developing a…
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