Conditional heteroscedasticity has been often used in modelling and understanding the variability of statistical data. Under a general setup which includes the nonlinear time series model as a special case, we propose an e cient and adaptive method for estimating the conditional variance. The basic idea is to apply a local linear regression to the squared residuals. We demonstrate that without knowing the regression function, we can estimate the conditional variance asymptotically as well as if the regression were given. This asymptotic result, established under the assumption that the observations are made from a strictly stationary and absolutely regular process, is also veri ed via simulation. Further, the asymptotic result paves the way...
The thesis studies variance function estimation in nonparametric regression model. It focuses on loc...
Stochastic regression model with unknown conditional mean and conditional variance is considered in ...
This paper addresses the problem of deriving the asymptotic distribution of the empirical distributi...
Conditional heteroscedasticity has been often used in modelling and understanding the variability of...
We consider estimation of mean and variance functions with kernel-weighted local polynomial fitting ...
The conditional variance function in a heteroscedastic, nonparametric regression model is estimated ...
In this paper, we study adaptive nonparametric regression estimation in the presence of conditional ...
In this paper, we study adaptive nonparametric regression estimation in the presence of conditional ...
In this paper we consider a unified approach for fitting conditionally nonlinear time series models ...
this paper we consider a nonparametric regres-sion model in which the conditional variance function ...
Abstract: When data are complete, the estimation of the conditional variance function in a heterosce...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
In this paper we consider adaptive Bayesian semiparametric analysis of the linear regression model i...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
We investigate two problems in modelling time series data that exhibit conditional heteroscedasticit...
The thesis studies variance function estimation in nonparametric regression model. It focuses on loc...
Stochastic regression model with unknown conditional mean and conditional variance is considered in ...
This paper addresses the problem of deriving the asymptotic distribution of the empirical distributi...
Conditional heteroscedasticity has been often used in modelling and understanding the variability of...
We consider estimation of mean and variance functions with kernel-weighted local polynomial fitting ...
The conditional variance function in a heteroscedastic, nonparametric regression model is estimated ...
In this paper, we study adaptive nonparametric regression estimation in the presence of conditional ...
In this paper, we study adaptive nonparametric regression estimation in the presence of conditional ...
In this paper we consider a unified approach for fitting conditionally nonlinear time series models ...
this paper we consider a nonparametric regres-sion model in which the conditional variance function ...
Abstract: When data are complete, the estimation of the conditional variance function in a heterosce...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
In this paper we consider adaptive Bayesian semiparametric analysis of the linear regression model i...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
We investigate two problems in modelling time series data that exhibit conditional heteroscedasticit...
The thesis studies variance function estimation in nonparametric regression model. It focuses on loc...
Stochastic regression model with unknown conditional mean and conditional variance is considered in ...
This paper addresses the problem of deriving the asymptotic distribution of the empirical distributi...