We present a new approach to parameter estimation problems based on binary measurements, motivated by the need to add integrated low-cost self-test features to microfabricated devices. This approach is based on the use of original weighted least-squares criteria: as opposed to other existing methods, it requires no dithering signal and it does not rely on an approximation of the quantizer. In this paper, we focus on a simple choice for the weights and establish some asymptotical properties of the corresponding criterion. To achieve this, the assumption that the quantizer's input is Gaussian and centered is made. In this context, we prove that the proposed criterion is locally convex and that it is possible to use a simple gradient descent t...
This paper addresses the problem of parameter estimation of stochastic liner systems with noisy inpu...
The least squares parametric system identification algorithm is analyzed assuming that the noise is ...
Abstract: The problem of parameters estimation of an autoregressive process is considered. The metho...
We present a new approach to parameter estimation problems based on binary measurements, motivated b...
In this paper, we present a new weighted least-squares (WLS) approach for parameter estimation based...
International audienceIn this paper, we investigate the quality of a weighted leastsquare (WLS) para...
A new least-squares-based method is established to perform unbiased parameter estimation of linear s...
We propose a new approach to weighting initial parameter misfits in a least squares optimization pro...
A new technique for parameter estimation is considered in a linear measurement error model AX approx...
Novel convex measurement cost minimization problems are proposed based on various estimation accurac...
In this paper an algorithm is given to compute least squares estimates for the parameters of a dynam...
Mead Communicated by Abstract. We propose a new approach to weighting initial parameter misfits in a...
An online approach to parameter estimation problems based on binary observations is presented in thi...
This paper studies the computational efficiency of the bias-eliminated least-squares (BELS) method r...
This paper addresses the problem of parameter estimation of stochastic liner systems with noisy inpu...
The least squares parametric system identification algorithm is analyzed assuming that the noise is ...
Abstract: The problem of parameters estimation of an autoregressive process is considered. The metho...
We present a new approach to parameter estimation problems based on binary measurements, motivated b...
In this paper, we present a new weighted least-squares (WLS) approach for parameter estimation based...
International audienceIn this paper, we investigate the quality of a weighted leastsquare (WLS) para...
A new least-squares-based method is established to perform unbiased parameter estimation of linear s...
We propose a new approach to weighting initial parameter misfits in a least squares optimization pro...
A new technique for parameter estimation is considered in a linear measurement error model AX approx...
Novel convex measurement cost minimization problems are proposed based on various estimation accurac...
In this paper an algorithm is given to compute least squares estimates for the parameters of a dynam...
Mead Communicated by Abstract. We propose a new approach to weighting initial parameter misfits in a...
An online approach to parameter estimation problems based on binary observations is presented in thi...
This paper studies the computational efficiency of the bias-eliminated least-squares (BELS) method r...
This paper addresses the problem of parameter estimation of stochastic liner systems with noisy inpu...
The least squares parametric system identification algorithm is analyzed assuming that the noise is ...
Abstract: The problem of parameters estimation of an autoregressive process is considered. The metho...