In recent years, it is seen in many time series applications that innovations are non-normal. In this situation, it is known that the least squares (LS) estimators are neither efficient nor robust and maximum likelihood (ML) estimators can only be obtained numerically which might be problematic. The estimation problem is considered newly through different distributions by the use of modified maximum likelihood (MML) estimation technique which assumes the shape parameter to be known. This becomes a drawback in machine data processing where the underlying distribution cannot be determined but assumed to be a member of a broad class ofdistributions. Therefore, in this study, the shape parameter is assumed to be unknown and the MML technique is...
In this paper we consider two kinds of generalizations of Lancaster's (Review of Economic Studies, 2...
A new class of robust estimators for VAR models is introduced. These estimators are an extension to ...
This paper derives the exact distribution of the maximum likelihood estimator of a first-order linea...
In this paper, we consider the autoregressive models where the error term is non-normal; specificall...
Non-normality is becoming a common feature in real life applications. Using non-normal disturbances ...
AR(1) models in time series with nonnormal errors represented by two families of distributions: (i) ...
This thesis proposes the global self-weighted least absolute deviation (LAD) estimator for finite an...
In many applications of time series, the assumption of stationarity has been widely used to analyse ...
We illustrate several recent results on efficient estimation for semiparametric time series models w...
We discuss an algorithm for the autoregression (AR) model as a typical time-series model. By analyzi...
The innovations in AR(1) models in time series have primarily been assumed to have a normal or long-...
An algorithm for robust fitting of AR models is given, based on a linear regression idea. The new me...
The estimation of coefficients in a simple autoregressive model is considered in a supposedly diffic...
A non-Gaussian autoregressive model with epsilon-skew-normal innovations is introduced. Moments and ...
To estimate a time series model for multiple individuals, a multilevel model may be used. In this pa...
In this paper we consider two kinds of generalizations of Lancaster's (Review of Economic Studies, 2...
A new class of robust estimators for VAR models is introduced. These estimators are an extension to ...
This paper derives the exact distribution of the maximum likelihood estimator of a first-order linea...
In this paper, we consider the autoregressive models where the error term is non-normal; specificall...
Non-normality is becoming a common feature in real life applications. Using non-normal disturbances ...
AR(1) models in time series with nonnormal errors represented by two families of distributions: (i) ...
This thesis proposes the global self-weighted least absolute deviation (LAD) estimator for finite an...
In many applications of time series, the assumption of stationarity has been widely used to analyse ...
We illustrate several recent results on efficient estimation for semiparametric time series models w...
We discuss an algorithm for the autoregression (AR) model as a typical time-series model. By analyzi...
The innovations in AR(1) models in time series have primarily been assumed to have a normal or long-...
An algorithm for robust fitting of AR models is given, based on a linear regression idea. The new me...
The estimation of coefficients in a simple autoregressive model is considered in a supposedly diffic...
A non-Gaussian autoregressive model with epsilon-skew-normal innovations is introduced. Moments and ...
To estimate a time series model for multiple individuals, a multilevel model may be used. In this pa...
In this paper we consider two kinds of generalizations of Lancaster's (Review of Economic Studies, 2...
A new class of robust estimators for VAR models is introduced. These estimators are an extension to ...
This paper derives the exact distribution of the maximum likelihood estimator of a first-order linea...