In this paper, we study three different types of estimates for the noise-to signal ratios in a general stochastic regression setup. The locally linear and locally quadratic regression estimators serve as the building blocks in our approach. Under the assumption that the observations are strictly stationary and absolutely regular, we establish the asymptotic normality of the estimates, which indicates that the residual-based estimates are to be preferred. Further, the locally quadratic regression reduces the bias when compared with the locally linear (or locally constant) regression without the concomitant increase in the asymptotic variance, if the same bandwidth is used. The asymptotic theory also paves the way for a fully data-driven unde...
Consider a detector which records the times at which the realizations of a nonparametric regression ...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
In this paper, we study three different types of estimates for the noise-to signal ratios in a gener...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
Signal-to-noise ratio (SNR) statistics play a central role in many applications. A common situation ...
Several estimators of variance are compared in the context of problems where smoothing is incorporat...
We study the efficient estimation of nonparametric regression in the presence of heteroskedasticity....
The article considers the problem of estimating linear parameters in stochastic regression models wi...
We study the efficient estimation of nonparametric regression in the presence of heteroskedasticity....
This paper is concerned with estimating nonparametric regression function g on the basis of noisy ob...
The paper deals with estimating problem of regression function at a given state point in nonparametr...
A local limit theorem is proved for sample covariances of nonstationary time se-ries and integrable ...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
We focus on nonparametric multivariate regression function estimation by locally weighted least squa...
Consider a detector which records the times at which the realizations of a nonparametric regression ...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
In this paper, we study three different types of estimates for the noise-to signal ratios in a gener...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
Signal-to-noise ratio (SNR) statistics play a central role in many applications. A common situation ...
Several estimators of variance are compared in the context of problems where smoothing is incorporat...
We study the efficient estimation of nonparametric regression in the presence of heteroskedasticity....
The article considers the problem of estimating linear parameters in stochastic regression models wi...
We study the efficient estimation of nonparametric regression in the presence of heteroskedasticity....
This paper is concerned with estimating nonparametric regression function g on the basis of noisy ob...
The paper deals with estimating problem of regression function at a given state point in nonparametr...
A local limit theorem is proved for sample covariances of nonstationary time se-ries and integrable ...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
We focus on nonparametric multivariate regression function estimation by locally weighted least squa...
Consider a detector which records the times at which the realizations of a nonparametric regression ...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...