Automated measurement of redshift from mid-infrared low resolution spectroscopy
Antonio Hern\'an-Caballero

TL;DR
This paper introduces a new SED-fitting routine with a novel MCPL algorithm for more accurate and reliable redshift measurements from mid-infrared low-resolution spectra, outperforming traditional methods.
Contribution
The paper presents the MCPL algorithm, a new selection method that improves redshift accuracy and reduces outliers in MIR spectroscopy compared to standard maximum-likelihood approaches.
Findings
MCPL achieves 78% accuracy at dz/(1+z)<0.005.
MCPL reduces outliers to 14%, lower than ML.
Reliability correlates with MIR SED type and the gamma indicator.
Abstract
We present a new SED-fitting based routine for redshift determination that is optimised for mid-infrared (MIR) low-resolution spectroscopy. Its flexible template scaling increases the sensitivity to slope changes and small scale features in the spectrum, while a new selection algorithm called Maximum Combined Pseudo-Likelihood (MCPL) provides increased accuracy and a lower number of outliers compared to the standard maximum-likelihood (ML) approach. Unlike ML, MCPL searches for local (instead of absolute) maxima of a 'pseudo-likelihood' (PL) function, and combines results obtained for all the templates in the library to weed out spurious redshift solutions. The capabilities of MCPL are demonstrated by comparing its results to those of regular ML and to the optical spectroscopic redshifts of a sample of 491 Spitzer/IRS spectra from sources at 0<z<3.7. MCPL achieves a redshift accuracy…
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