Published March 15, 2019 | Submitted + Published
Journal Article Open

Rainbow cosmic shear: Optimization of tomographic bins

An error occurred while generating the citation.

Abstract

In this paper, we address the problem of finding optimal cosmic shear tomographic bins. We generalize the definition of a cosmic shear tomographic bin to be a set of commonly labeled voxels in photometric color space; rather than bins defined directly in redshift. We explore this approach by using a self-organizing map to define the multidimensional color space, and a we define a "label space" of connected regions on the self-organizing map using overlapping elliptical disks. This allows us to then find optimal labeling schemes by searching the label space. We use a metric that is the signal-to-noise ratio of a dark energy equation of state measurement, and in this case we find that for up to five tomographic bins the optimal color-space labeling is an approximation of an equally spaced binning in redshift; that is in all cases the best configuration. We also show that such a redefinition is more robust to photometric redshift outliers than a standard tomographic bin selection.

Additional Information

© 2019 American Physical Society. (Received 8 January 2019; published 29 March 2019) We thank the Cosmosis team for making their code publicly available. P. T. is supported by STFC. T. K. is supported by a Royal Society University Research Fellowship. We thank J. Zuntz for providing a development branch of Cosmosis that was used in this analysis. D. M. and P. C. acknowledge support by NASA ROSES Grant No. 12-EUCLID12-0004. D. M. acknowledges support for this work from a NASA Postdoctoral Program Fellowship. H. H. acknowledges support from Vici Grant No. 639.043.512, financed by the Netherlands Organisation for Scientific Research (NWO).

Attached Files

Published - PhysRevD.99.063536.pdf

Submitted - 1901.06495.pdf

Files

PhysRevD.99.063536.pdf
Files (4.1 MB)
Name Size Download all
md5:4076a65268dc23660267499e1e90fdb6
1.3 MB Preview Download
md5:d9527bfb82aa890cd38e838656a8d445
2.7 MB Preview Download

Additional details

Created:
August 19, 2023
Modified:
October 20, 2023