In this paper, we present a new weighted least-squares (WLS) approach for parameter estimation based on binary data. Two WLS criteria are studied. We show that these two criteria do not have the same asymptotical behavior although they are closely related. Particularly, in the presence of noise, one of the criteria used for determining the system parameters provides an appropriate estimation, whereas the other one leads to an underestimation of the system parameters. These asymptotical results are illustrated by simulations in Gaussian and non-Gaussian contexts
A new least-squares-based method is established to perform unbiased parameter estimation of linear s...
The bias-eliminating least squares (BELS) method is one of the consistent estimators for identifying...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
In this paper, we present a new weighted least-squares (WLS) approach for parameter estimation based...
We present a new approach to parameter estimation problems based on binary measurements, motivated b...
International audienceIn this paper, we investigate the quality of a weighted leastsquare (WLS) para...
In this paper an algorithm is given to compute least squares estimates for the parameters of a dynam...
This diploma thesis dissertate about consistency and asymptotic representation of the least weighted...
Abstract: The problem of parameters estimation of an autoregressive process is considered. The metho...
We propose a new approach to weighting initial parameter misfits in a least squares optimization pro...
The least squares parametric system identification algorithm is analyzed assuming that the noise is ...
A general approach for fitting a model to a data matrix by weighted least squares (WLS) is studied. ...
A new technique for parameter estimation is considered in a linear measurement error model AX approx...
It is well-known that the Weighted Least Squares (WLS) identification algorithm provides estimates t...
A new least-squares-based method is established to perform unbiased parameter estimation of linear s...
The bias-eliminating least squares (BELS) method is one of the consistent estimators for identifying...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
In this paper, we present a new weighted least-squares (WLS) approach for parameter estimation based...
We present a new approach to parameter estimation problems based on binary measurements, motivated b...
International audienceIn this paper, we investigate the quality of a weighted leastsquare (WLS) para...
In this paper an algorithm is given to compute least squares estimates for the parameters of a dynam...
This diploma thesis dissertate about consistency and asymptotic representation of the least weighted...
Abstract: The problem of parameters estimation of an autoregressive process is considered. The metho...
We propose a new approach to weighting initial parameter misfits in a least squares optimization pro...
The least squares parametric system identification algorithm is analyzed assuming that the noise is ...
A general approach for fitting a model to a data matrix by weighted least squares (WLS) is studied. ...
A new technique for parameter estimation is considered in a linear measurement error model AX approx...
It is well-known that the Weighted Least Squares (WLS) identification algorithm provides estimates t...
A new least-squares-based method is established to perform unbiased parameter estimation of linear s...
The bias-eliminating least squares (BELS) method is one of the consistent estimators for identifying...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...