Linear Regression in Astronomy. I.
Abstract
Five methods for obtaining linear regression fits to bivariate data with unknown or insignificant measurement errors are discussed: ordinary leastsquares (OLS) regression of Y on X, OLS regression of X on Y, the bisector of the two OLS lines, orthogonal regression, and 'reduced majoraxis' regression. These methods have been used by various researchers in observational astronomy, most importantly in cosmic distance scale applications. Formulas for calculating the slope and intercept coefficients and their uncertainties are given for all the methods, including a new general form of the OLS variance estimates. The accuracy of the formulas was confirmed using numerical simulations. The applicability of the procedures is discussed with respect to their mathematical properties, the nature of the astronomical data under consideration, and the scientific purpose of the regression. It is found that, for problems needing symmetrical treatment of the variables, the OLS bisector performs significantly better than orthogonal or reduced majoraxis regression.
 Publication:

The Astrophysical Journal
 Pub Date:
 November 1990
 DOI:
 10.1086/169390
 Bibcode:
 1990ApJ...364..104I
 Keywords:

 Astronomy;
 Least Squares Method;
 Regression Analysis;
 Computational Astrophysics;
 Galaxies;
 Slopes;
 Astronomy;
 ANALYTICAL METHODS;
 GALAXIES: GENERAL;
 NUMERICAL METHODS