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(Reference retrieved automatically from Web of Science through information on FAPESP grant and its corresponding number as mentioned in the publication by the authors.)

PHOTO-z ESTIMATION: AN EXAMPLE OF NONPARAMETRIC CONDITIONAL DENSITY ESTIMATION UNDER SELECTION BIAS

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Author(s):
Izbicki, Rafael ; Lee, Ann B. ; Freeman, Peter E.
Total Authors: 3
Document type: Journal article
Source: Annals of Applied Statistics; v. 11, n. 2, p. 698-724, JUN 2017.
Web of Science Citations: 1
Abstract

Redshift is a key quantity for inferring cosmological model parameters. In photometric redshift estimation, cosmologists use the coarse data collected from the vast majority of galaxies to predict the redshift of individual galaxies. To properly quantify the uncertainty in the predictions, however, one needs to go beyond standard regression and instead estimate the full conditional density f (z|x) of a galaxy's redshift z given its photometric covariates x. The problem is further complicated by selection bias: usually only the rarest and brightest galaxies have known redshifts, and these galaxies have characteristics and measured covariates that do not necessarily match those of more numerous and dimmer galaxies of unknown redshift. Unfortunately, there is not much research on how to best estimate complex multivariate densities in such settings. Here we describe a general framework for properly constructing and assessing nonparametric conditional density estimators under selection bias, and for combining two or more estimators for optimal performance. We propose new improved photo-z estimators and illustrate our methods on data from the Sloan Data Sky Survey and an application to galaxy-galaxy lensing. Although our main application is photo-z estimation, our methods are relevant to any high-dimensional regression setting with complicated asymmetric and multimodal distributions in the response variable. (AU)

FAPESP's process: 17/03363-8 - Interpretability and efficiency in hypothesis tests
Grantee:Rafael Izbicki
Support Opportunities: Regular Research Grants
FAPESP's process: 14/25302-2 - A flexible approach to high-dimensional conditional density estimation
Grantee:Rafael Izbicki
Support Opportunities: Regular Research Grants