Large scale clustering measurements with photometric redshifts: comparing the dark matter halos of X-ray AGN, star-forming and passive galaxies at z~1
A. Georgakakis, G. Mountrichas, M. Salvato, D. Rosario, P. G., P\'erez-Gonz\'alez, D. Lutz, K. Nandra, A. Coil, M. C. Cooper, J. A. Newman,, S. Berta, B. Magnelli, P. Popesso, F. Pozzi

TL;DR
This study measures the dark matter halo masses of different galaxy populations at z~1 using a novel clustering method that incorporates photometric redshift PDFs, revealing similar halo masses across diverse galaxy types.
Contribution
It introduces a new clustering measurement technique utilizing photometric redshift PDFs, enabling inclusion of all sources and improving analysis of large galaxy samples.
Findings
X-ray AGN, star-forming, and passive galaxies reside in halos of similar mass (~10^13 M_sun/h).
Halo mass correlates with stellar mass, not star formation activity.
Stellar mass influences clustering properties and possibly AGN characteristics.
Abstract
We combine multiwavelength data in the AEGIS-XD and C-COSMOS surveys to measure the typical dark matter halo mass of X-ray selected AGN [Lx(2-10keV)>1e42 erg/s] in comparison with far-infrared selected star-forming galaxies detected in the Herschel/PEP survey (PACS Evolutionary Probe; Lir>1e11 solar) and quiescent systems at z~1. We develop a novel method to measure the clustering of extragalactic populations that uses photometric redshift Probability Distribution Functions in addition to any spectroscopy. This is advantageous in that all sources in the sample are used in the clustering analysis, not just the subset with secure spectroscopy. The method works best for large samples. The loss of accuracy because of the lack of spectroscopy is balanced by increasing the number of sources used to measure the clustering. We find that X-ray AGN, far-infrared selected star-forming galaxies and…
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