The autocorrelation function (ACF) plays an important role in the context of ARMA modeling, especially for their identification and estimation. This study considers the robust estimation of the ACF of the AR(1) model if the white noise (WN) process is non- Gaussian. Three estimators including the ordinary moment estimator and two other (robust) estimators are considered. The impacts of the deviation from normality of the WN process on those estimators in terms of bias, MSE and distribution via Monte-Carlo simulation are examined. The empirical distribution of those estimators when the errors are normal, t, Cauchy and exponential are studied. Results show that the moment estimator is more affected by the change of the white noise distributio...
Estimating the parameters of the autoregressive (AR) random process is a problem that has been well-...
Abstract — This paper focuses on bias compensation estima-tion of autoregressive (AR) process in the...
In many real world situations there is no reason to believe that the time series observations are no...
The autocorrelation function (ACF) plays an important role in the context of ARMA modeling, especial...
Abstract: Most of time series that appear in many economical geophysical and other phenomena are dri...
A method for autoregressive (AR) modeling of stationary stochastic signals has previously been propo...
The Autocorrelation Function (ACF) was originally studied as a tool for analyzing dependence for Gau...
AbstractWe discuss a maximum likelihood procedure for estimating parameters in possibly noncausal au...
The autocorrelation function (acf) and the partial autocorrelation function (pacf) are elementary t...
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
A desirable property of an autocovariance estimator is to be robust to the presence of additive outl...
This paper considers the problem of estimating the parameters of an autoregressive (AR) process in p...
International audienceThe autoregressive moving-average (ARMA) modeling of time series is popular an...
The importance of working with sufficiently robust methods has been rising in recent years. This gro...
A method for autoregressive (AR) modeling of stationary stochastic signals has been proposed based o...
Estimating the parameters of the autoregressive (AR) random process is a problem that has been well-...
Abstract — This paper focuses on bias compensation estima-tion of autoregressive (AR) process in the...
In many real world situations there is no reason to believe that the time series observations are no...
The autocorrelation function (ACF) plays an important role in the context of ARMA modeling, especial...
Abstract: Most of time series that appear in many economical geophysical and other phenomena are dri...
A method for autoregressive (AR) modeling of stationary stochastic signals has previously been propo...
The Autocorrelation Function (ACF) was originally studied as a tool for analyzing dependence for Gau...
AbstractWe discuss a maximum likelihood procedure for estimating parameters in possibly noncausal au...
The autocorrelation function (acf) and the partial autocorrelation function (pacf) are elementary t...
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
A desirable property of an autocovariance estimator is to be robust to the presence of additive outl...
This paper considers the problem of estimating the parameters of an autoregressive (AR) process in p...
International audienceThe autoregressive moving-average (ARMA) modeling of time series is popular an...
The importance of working with sufficiently robust methods has been rising in recent years. This gro...
A method for autoregressive (AR) modeling of stationary stochastic signals has been proposed based o...
Estimating the parameters of the autoregressive (AR) random process is a problem that has been well-...
Abstract — This paper focuses on bias compensation estima-tion of autoregressive (AR) process in the...
In many real world situations there is no reason to believe that the time series observations are no...