Accuracy evaluation is an integral part of parameter estimation by least-squares analysis. We present an analysis of error propagation when the measurement error is a second-order autoregressive process. When the measurement correlation is neglected, least-squares procedures underestimate the uncertainty. In order to scale up the uncertainty, we investigated autoregressive measurement errors, calculated their correlation, and assessed the estimate uncertainty in terms of the sampling frequency. Our results, which are amenable to approximations and numerical computations, show clearly how correlation influences error propagation and are useful in devising strategies for optimal measurement design
Purpose The purpose of this paper is to enhance consistent partial least squares (PLSc) to yield con...
For an autoregressive process of order p, the paper proposes new sequential estimates for the unknow...
Purpose The purpose of this paper is to enhance consistent partial least squares (PLSc) to yield con...
Accuracy evaluation is an integral part of parameter estimation by least-squares analysis. We presen...
Abstract The article studies the least squares method and its application for estimating measuremen...
Most of the existing autoregressive models presume that the observations are perfectly measured. In ...
AbstractFor the estimation of coefficients in a measurement error model, the least squares method ut...
Most of the existing autoregressive models presume that the observations are perfectly measured. In ...
International audienceWe are interested in the implications of a linearly autocorrelated driven nois...
Two common problems in applications of two-stage least squares (2SLS) are nonrandom measurement erro...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
The present paper examines the properties of the Cpk estimator when observations are autocorrelated ...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
Estimation of a regression function from independent and identical distributed data is considered. T...
A common set of statistical metrics has been used to summarize the performance of models or measurem...
Purpose The purpose of this paper is to enhance consistent partial least squares (PLSc) to yield con...
For an autoregressive process of order p, the paper proposes new sequential estimates for the unknow...
Purpose The purpose of this paper is to enhance consistent partial least squares (PLSc) to yield con...
Accuracy evaluation is an integral part of parameter estimation by least-squares analysis. We presen...
Abstract The article studies the least squares method and its application for estimating measuremen...
Most of the existing autoregressive models presume that the observations are perfectly measured. In ...
AbstractFor the estimation of coefficients in a measurement error model, the least squares method ut...
Most of the existing autoregressive models presume that the observations are perfectly measured. In ...
International audienceWe are interested in the implications of a linearly autocorrelated driven nois...
Two common problems in applications of two-stage least squares (2SLS) are nonrandom measurement erro...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
The present paper examines the properties of the Cpk estimator when observations are autocorrelated ...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
Estimation of a regression function from independent and identical distributed data is considered. T...
A common set of statistical metrics has been used to summarize the performance of models or measurem...
Purpose The purpose of this paper is to enhance consistent partial least squares (PLSc) to yield con...
For an autoregressive process of order p, the paper proposes new sequential estimates for the unknow...
Purpose The purpose of this paper is to enhance consistent partial least squares (PLSc) to yield con...