AbstractThe stabilized versions of the least squares (LS) and total least squares (TLS) methods are two examples of orthogonal projection methods commonly used to “solve” the overdetermined system of linear equations AX ≈ B when A is nearly rank-deficient. In practice, when this system represents the noisy version of an exact rank-deficient, zero-residual problem, TLS usually yields a more accurate estimate of the exact solution. However, current perturbation theory does not justify the superiority of TLS over LS. In this paper we establish a model for orthogonal projection methods by reformulating the parameter estimation problem as an equivalent problem of nullspace determination. When the method is based on the singular value decompositi...