{\sc mirkwood:} Fast and Accurate SED Modeling Using Machine Learning
Sankalp Gilda, Sidney Lower, Desika Narayanan

TL;DR
Mirkwood is a machine learning tool that significantly improves the speed and accuracy of galaxy property estimation from spectral energy distributions, outperforming traditional Bayesian fitting methods.
Contribution
It introduces a machine learning ensemble approach for non-linear mapping of galaxy fluxes to properties, with uncertainty quantification and interpretability features.
Findings
Mirkwood outperforms traditional SED fitting in accuracy.
It effectively accounts for observational noise and model uncertainties.
Uses SHAP for interpretability of band importance.
Abstract
Traditional spectral energy distribution (SED) fitting codes used to derive galaxy physical properties are often uncertain at the factor of a few level owing to uncertainties in galaxy star formation histories and dust attenuation curves. Beyond this, Bayesian fitting (which is typically used in SED fitting software) is an intrinsically compute-intensive task, often requiring access to expensive hardware for long periods of time. To overcome these shortcomings, we have developed {\sc mirkwood}: a user-friendly tool comprising of an ensemble of supervised machine learning-based models capable of non-linearly mapping galaxy fluxes to their properties. By stacking multiple models, we marginalize against any individual model's poor performance in a given region of the parameter space. We demonstrate \textsc{mirkwood}'s significantly improved performance over traditional techniques by…
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