HerMES: A Statistical Measurement of the Redshift Distribution of Herschel-SPIRE Sources Using the Cross-correlation Technique
K. Mitchell-Wynne, A. Cooray, Y. Gong, M. Bethermin, J. Bock, A., Franceschini, J. Glenn, M. Griffin, M. Halpern, L. Marchetti, S.J. Oliver,, M.J. Page, I. Perez-Fournon, B. Schulz, D. Scott, J. Smidt, A. Smith, M., Vaccari, L. Vigroux, L. Wang, J.L. Wardlow, M. Zemcov

TL;DR
This paper statistically estimates the redshift distribution of Herschel-SPIRE sub-mm galaxies using cross-correlation with optical and IR galaxy samples, revealing their typical redshifts and clustering bias.
Contribution
It introduces a novel clustering analysis method to determine the redshift distribution of Herschel-detected galaxies, improving understanding of their evolution and clustering properties.
Findings
Redshift distribution peaks around z~0.5-1 for 250 μm sources.
Average redshift for selected galaxies is approximately 1.8-1.9.
Bias factor varies with redshift, consistent with dark matter halo models.
Abstract
The wide-area imaging surveys with the {\it Herschel} Space Observatory at sub-mm wavelengths have now resulted in catalogs of order one hundred thousand dusty, star-burst galaxies. We make a statistical estimate of using a clustering analysis of sub-mm galaxies detected at each of 250, 350 and 500 m from the Herschel Multi-tiered Extragalactic Survey (HerMES) centered on the Bo\"{o}tes field. We cross-correlate {\it Herschel} galaxies against galaxy samples at optical and near-IR wavelengths from the Sloan Digital Sky Survey (SDSS), the NOAO Deep Wide Field Survey (NDWFS) and the Spitzer Deep Wide Field Survey (SDWFS). We create optical and near-IR galaxy samples based on their photometric or spectroscopic redshift distributions and test the accuracy of those redshift distributions with similar galaxy samples defined with catalogs of the Cosmological Evolution Survey…
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