In this paper, we consider the autoregressive models where the error term is non-normal; specifically belongs to a long-tailed symmetric distribution family since it is more relevant in practice than the normal distribution. It is known that least squares (LS) estimators are neither efficient nor robust under non-normality and maximum likelihood (ML) estimators cannot be obtained explicitly and require a numerical solution which might be problematic. In recent years, modified maximum likelihood (MML) estimation is developed to overcome these difficulties. However, this method requires that the shape parameter is known which is not realistic in machine data processing. Therefore, we use adaptive modified maximum likelihood (AMML) technique w...
AR(1) models in time series with nonnormal errors represented by two families of distributions: (i) ...
Salient features of a family of short-tailed symmetric distributions, introduced recently by Tiku an...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In recent years, it is seen in many time series applications that innovations are non-normal. In thi...
Non-normality is becoming a common feature in real life applications. Using non-normal disturbances ...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
Symmetric short-tailed distributions do indeed occur in practice but have not received much attentio...
In classical autoregressive models, it is assumed that the disturbances are normally distributed and...
Stable autoregressive models of known finite order are considered with martingale differences errors s...
In this paper, we develop the modified maximum likelihood (MML) estimators for the multiple regressi...
This paper considers adaptive estimation in nonstationary autoregressive moving average models with ...
Suppose we observe an ergodic Markov chain on the real line, with a parametric model for the autoreg...
International audienceThis paper deals with the estimation of a autoregression function at a given p...
This paper reports preliminary monte carla evidence on the fixed sample size properties of adaptive ...
The innovations in AR(1) models in time series have primarily been assumed to have a normal or long-...
AR(1) models in time series with nonnormal errors represented by two families of distributions: (i) ...
Salient features of a family of short-tailed symmetric distributions, introduced recently by Tiku an...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In recent years, it is seen in many time series applications that innovations are non-normal. In thi...
Non-normality is becoming a common feature in real life applications. Using non-normal disturbances ...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
Symmetric short-tailed distributions do indeed occur in practice but have not received much attentio...
In classical autoregressive models, it is assumed that the disturbances are normally distributed and...
Stable autoregressive models of known finite order are considered with martingale differences errors s...
In this paper, we develop the modified maximum likelihood (MML) estimators for the multiple regressi...
This paper considers adaptive estimation in nonstationary autoregressive moving average models with ...
Suppose we observe an ergodic Markov chain on the real line, with a parametric model for the autoreg...
International audienceThis paper deals with the estimation of a autoregression function at a given p...
This paper reports preliminary monte carla evidence on the fixed sample size properties of adaptive ...
The innovations in AR(1) models in time series have primarily been assumed to have a normal or long-...
AR(1) models in time series with nonnormal errors represented by two families of distributions: (i) ...
Salient features of a family of short-tailed symmetric distributions, introduced recently by Tiku an...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...