GALGMar 5, 2025

The optical and infrared are connected

arXiv:2503.03816v1h-index: 109
Originality Incremental advance
AI Analysis

This addresses the issue of model misspecification in spectral energy distribution fitting for astronomers, leading to improved accuracy in star-formation and AGN luminosity estimates.

The authors tackled the problem of predicting infrared photometry from optical spectra in galaxy modeling, achieving accurate predictions with χ²_N ≈ 1 for all WISE bands and tightly constraining properties like AGN luminosities and dust parameters.

Galaxies are often modelled as composites of separable components with distinct spectral signatures, implying that different wavelength ranges are only weakly correlated. They are not. We present a data-driven model which exploits subtle correlations between physical processes to accurately predict infrared (IR) WISE photometry from a neural summary of optical SDSS spectra. The model achieves accuracies of $χ^2_N \approx 1$ for all photometric bands in WISE, as well as good colors. We are also able to tightly constrain typically IR-derived properties, e.g. the bolometric luminosities of AGN and dust parameters such as $\mathrm{q_{PAH}}$. We find that current SED-fitting methods are incapable of making comparable predictions, and that model misspecification often leads to correlated biases in star-formation rates and AGN luminosities. To help improve SED models, we determine what features of the optical spectrum are responsible for our improved predictions, and identify several lines (CaII, SrII, FeI, [OII] and H$α$), which point to the complex chronology of star formation and chemical enrichment being incorrectly modelled.

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