BLAST: Correlations in the Cosmic Far-Infrared Background at 250, 350, and 500 microns Reveal Clustering of Star-Forming Galaxies
Marco P. Viero, Peter A. R. Ade, James J. Bock, Edward L. Chapin, Mark, J. Devlin, Matthew Griffin, Joshua O. Gundersen, Mark Halpern, Peter C., Hargrave, David H. Hughes, Jeff Klein, Carrie J. MacTavish, Gaelen Marsden,, Peter G. Martin, Philip Mauskopf, Lorenzo Moncelsi

TL;DR
This study detects and analyzes correlations in the cosmic far-infrared background caused by star-forming galaxy clustering, providing insights into galaxy distribution, bias, and halo properties at multiple wavelengths.
Contribution
It presents the first measurement of far-infrared background correlations at 250, 350, and 500 microns, interpreting results with halo models and discussing implications for future clustering studies.
Findings
Correlations fit by a power law over 5-25 arcminutes.
Derived bias parameters for sources at different wavelengths.
Estimated minimum halo mass hosting star-forming galaxies.
Abstract
We detect correlations in the cosmic far-infrared background due to the clustering of star-forming galaxies in observations made with the Balloon-borne Large Aperture Submillimeter Telescope, BLAST, at 250, 350, and 500 microns. We perform jackknife and other tests to confirm the reality of the signal. The measured correlations are well fit by a power law over scales of 5-25 arcminutes, with Delta I/I = 15.1 +/- 1.7%. We adopt a specific model for submillimeter sources in which the contribution to clustering comes from sources in the redshift ranges 1.3 <= z <= 2.2, 1.5 <= z <= 2.7, and 1.7 <= z <= 3.2, at 250, 350, and 500 microns, respectively. With these distributions, our measurement of the power spectrum, P(k_theta), corresponds to linear bias parameters, b = 3.8 +/- 0.6, 3.9 +/- 0.6 and 4.4 +/- 0.7, respectively. We further interpret the results in terms of the halo model, and…
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