Automatic Redshift Determination by Use of Principal Component Analysis. I. Fundamentals
Open Access
- 1 January 1998
- journal article
- research article
- Published by American Astronomical Society in The Astrophysical Journal
- Vol. 492 (1) , 98-109
- https://doi.org/10.1086/305039
Abstract
With the advent of very large redshift surveys of tens to hundreds of thousands of galaxies, reliable techniques for automatically determining galaxy redshifts are becoming increasingly important. The most common technique currently in common use is the cross-correlation of a galactic spectrum with a set of templates. This series of papers presents a new method based on principal component analysis. The method generalizes the cross-correlation approach by replacing the individual templates with a simultaneous linear combination of orthogonal templates. This effectively eliminates the mismatch between templates and data and provides for the possibility of better error estimates. In this paper, the first of a series, the basic mathematics is presented along with a simple demonstration of the application.Keywords
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