Exploiting Low-Dimensional Structure in Astronomical Spectra
Abstract
Dimension-reduction techniques can greatly improve statistical inference in astronomy. A standard approach is to use Principal Components Analysis (PCA). In this work we apply a recently-developed technique, diffusion maps, to astronomical spectra for data parameterization and dimensionality reduction, and develop a robust, eigenmode-based framework for regression. We show how our framework provides a computationally efficient means by which to predict redshifts of galaxies, and thus could inform more expensive redshift estimators such as template cross-correlation. It also provides a natural means by which to identify outliers (e.g., misclassified spectra, spectra with anomalous features). We analyze 3835 SDSS spectra and show how our framework yields a more than 95% reduction in dimensionality. Finally, we show that the prediction error of the diffusion map-based regression approach is markedly smaller than that of a similar approach based on PCA, clearly demonstrating the superiority of diffusion maps over PCA for this regression task.
Cite
@article{arxiv.0807.2900,
title = {Exploiting Low-Dimensional Structure in Astronomical Spectra},
author = {Joseph W. Richards and Peter E. Freeman and Ann B. Lee and Chad M. Schafer},
journal= {arXiv preprint arXiv:0807.2900},
year = {2011}
}
Comments
24 pages, 8 figures