[[abstract]]For a time series generated by polynomial trend with stationary long-memory errors, the ordinary least squares estimator (OLSE) of the trend coefficients is asymptotically normal, provided the error process is linear. The asymptotic distribution may no longer be normal, if the error is in the form of a long-memory linear process passing through certain nonlinear transformations. However, one hardly has sufficient information about the transformation to determine which type of limiting distribution the OLSE converges to and to apply the correct distribution so as to construct valid confidence intervals for the coefficients based on the OLSE. The present paper proposes a modified least squares estimator to bypass this drawback. It...
ℓ1 polynomial trend filtering, which is a filtering method described as an ℓ1-norm penalized least-s...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
A general limit theorem is established for time series regression estimates which include generalize...
We give the limiting distribution of the least squares estimator in the polynomial regression model ...
[[sponsorship]]統計科學研究所[[note]]已出版;[SCI];有審查制度;具代表性[[note]]http://gateway.isiknowledge.com/gateway/Ga...
Prediction in time series models with a trend requires reliable estimation of the trend function at ...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
International audienceThe behaviour of the LS estimator in a nonlinear regression model is investiga...
This paper proposes an accurate confidence interval for the trend parameter in a linear regression m...
We show that it is possible to adapt to nonparametric disturbance autocorrelation in time series reg...
Nonparametric regression with long-range, short-range and antipersistent errors is considered. Local...
A central limit theorem is established for time series regression estimates which include generalize...
Limit theory is developed for least squares regression estimation of a model involving time trend po...
Power law or generalized polynomial regressions with unknown real-valued exponents and coefficients,...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
ℓ1 polynomial trend filtering, which is a filtering method described as an ℓ1-norm penalized least-s...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
A general limit theorem is established for time series regression estimates which include generalize...
We give the limiting distribution of the least squares estimator in the polynomial regression model ...
[[sponsorship]]統計科學研究所[[note]]已出版;[SCI];有審查制度;具代表性[[note]]http://gateway.isiknowledge.com/gateway/Ga...
Prediction in time series models with a trend requires reliable estimation of the trend function at ...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
International audienceThe behaviour of the LS estimator in a nonlinear regression model is investiga...
This paper proposes an accurate confidence interval for the trend parameter in a linear regression m...
We show that it is possible to adapt to nonparametric disturbance autocorrelation in time series reg...
Nonparametric regression with long-range, short-range and antipersistent errors is considered. Local...
A central limit theorem is established for time series regression estimates which include generalize...
Limit theory is developed for least squares regression estimation of a model involving time trend po...
Power law or generalized polynomial regressions with unknown real-valued exponents and coefficients,...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
ℓ1 polynomial trend filtering, which is a filtering method described as an ℓ1-norm penalized least-s...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
A general limit theorem is established for time series regression estimates which include generalize...