<p>The work revisits the autocovariance function estimation, a fundamental problem in statistical inference for time series. We convert the function estimation problem into constrained penalized regression with a generalized penalty that provides us with flexible and accurate estimation, and study the asymptotic properties of the proposed estimator. In case of a nonzero mean time series, we apply a penalized regression technique to a differenced time series, which does not require a separate detrending procedure. In penalized regression, selection of tuning parameters is critical and we propose four different data-driven criteria to determine them. A simulation study shows effectiveness of the tuning parameter selection and that the propose...
The generalised autocovariance function is defined for a stationary stochastic process as the invers...
The authors consider the time series regression model where the error term follows a nonstable autor...
Abstract: In this paper presents two methods for determining the degree of differencing required to ...
The purpose of this thesis was to evaluate a method for reducing the bias of estimation for autocova...
Penalized methods are becoming more and more popular in statistical research. This dissertation rese...
www.utdallas.edu/∼serfling. An important conceptual and methodological tool in time series modeling,...
fully acknowledged. A key conceptual and methodological tool in time series modeling is the auto-cov...
We propose the penalized estimator with the smoothly clipped absolute deviation (SCAD) penalty for v...
The second order properties of a process are usually characterized by the autocovariance function. I...
This paper presents a comprehensive Bayesian approach for semiparametrically estimating an additive ...
We use the sample covariations to estimate the parameters in a univariate symmetric stable autoregre...
The penalized least squares approach with smoothly clipped absolute deviation penalty has been consi...
We provide in this paper a fully adaptive penalized procedure to select a covari-ance among a collec...
International audienceWe provide in this paper a fully adaptive penalized procedure to select a cova...
A large class of estimators including maximum likelihood, least squares and M-estimators are based o...
The generalised autocovariance function is defined for a stationary stochastic process as the invers...
The authors consider the time series regression model where the error term follows a nonstable autor...
Abstract: In this paper presents two methods for determining the degree of differencing required to ...
The purpose of this thesis was to evaluate a method for reducing the bias of estimation for autocova...
Penalized methods are becoming more and more popular in statistical research. This dissertation rese...
www.utdallas.edu/∼serfling. An important conceptual and methodological tool in time series modeling,...
fully acknowledged. A key conceptual and methodological tool in time series modeling is the auto-cov...
We propose the penalized estimator with the smoothly clipped absolute deviation (SCAD) penalty for v...
The second order properties of a process are usually characterized by the autocovariance function. I...
This paper presents a comprehensive Bayesian approach for semiparametrically estimating an additive ...
We use the sample covariations to estimate the parameters in a univariate symmetric stable autoregre...
The penalized least squares approach with smoothly clipped absolute deviation penalty has been consi...
We provide in this paper a fully adaptive penalized procedure to select a covari-ance among a collec...
International audienceWe provide in this paper a fully adaptive penalized procedure to select a cova...
A large class of estimators including maximum likelihood, least squares and M-estimators are based o...
The generalised autocovariance function is defined for a stationary stochastic process as the invers...
The authors consider the time series regression model where the error term follows a nonstable autor...
Abstract: In this paper presents two methods for determining the degree of differencing required to ...