On Weighted Least Squares Estimators for Chirp Like Model
Article Type
Research Article
Publication Title
Sankhya A
Abstract
In this paper we have considered the chirp like model which has been recently introduced, and it has a very close resemblance with a chirp model. We consider the weighted least squares estimators of the parameters of a chirp like model in presence of an additive stationary error, and study their properties. It is observed that although the least squares method seems to be a natural choice to estimate the unknown parameters of a chirp like model, the least squares estimators are very sensitive to the outliers. It is observed that the weighted least squares estimators are quite robust in this respect. The weighted least squares estimators are consistent and they have the same rate of convergence as the least squares estimators. We have further extended the results in case of multicomponent chirp like model. Some simulations have been performed to show the effectiveness of the proposed method. In simulation studies, weighted least squares estimators have been compared with the least absolute deviation estimators which, in general, are known to work well in presence of outliers. One EEG data set has been analyzed and the results are quite satisfactory.
First Page
27
Last Page
66
DOI
10.1007/s13171-023-00313-x
Publication Date
2-1-2024
Recommended Citation
Kundu, Debasis; Nandi, Swagata; and Grover, Rhythm, "On Weighted Least Squares Estimators for Chirp Like Model" (2024). Journal Articles. 4962.
https://digitalcommons.isical.ac.in/journal-articles/4962