Title :
The extended least squares criterion: minimization algorithms and applications
Author_Institution :
Dept. of Electr. Eng.-Syst., Tel Aviv Univ., Israel
fDate :
1/1/2001 12:00:00 AM
Abstract :
The least squares (LS) estimation criterion on one hand, and the total LS (TLS), constrained TLS (CTLS) and structured TLS (STLS) criteria on the other hand, can be viewed as opposite limiting cases of a more general criterion, which we term “extended LS” (XLS). The XLS criterion distinguishes measurement errors from modeling errors by properly weighting and balancing the two error sources. In the context of certain models (termed “pseudo-linear”), we derive two iterative algorithms for minimizing the XLS criterion: One is a straightforward “alternating coordinates” minimization, and the other is an extension of an existing CTLS algorithm. The algorithms exhibit different tradeoffs between convergence rate, computational load, and accuracy. The XLS criterion can be applied to popular estimation problems, such as identifying an autoregressive (AR) with exogenous noise (ARX) system from noisy input/output measurements or estimating the parameters of an AR process from noisy measurements. We demonstrate the convergence properties and performance of the algorithms with examples of the latter
Keywords :
autoregressive processes; convergence of numerical methods; iterative methods; least squares approximations; measurement errors; minimisation; noise; parameter estimation; signal processing; AR process; CTLS algorithm; alternating coordinates minimization; autoregressive system; computational load; constrained TLS; convergence rate; error sources; estimation problems; exogenous noise; extended least squares criterion; iterative algorithms; least squares estimation; measurement errors; minimization algorithms; modeling errors; noisy input/output measurements; parameter estimation; pseudo-linear models; structured TLS; total LS; total least squares; Context modeling; Convergence; Equations; Iterative algorithms; Least squares approximation; Least squares methods; Measurement errors; Minimization methods; Noise measurement; Parameter estimation;
Journal_Title :
Signal Processing, IEEE Transactions on