Abstract: In this work, Bayes estimation of the first order moving average model (MA(1)) were studied. Theoretical justification of the Bayes estimates based on the estimated innovations is given. The convergence of Bayes and maximum likelihood estimates are examined via simulation using different parameter values. Also, Bayes estimates were determined when the model is invertible using the estimated innovations. For long series lengths, it has been noted that the Bayes estimate of of invertible MA(1) model assuming uniform prior on and inverted gamma prior on 2 equals the Bayes estimate of for noninvertible MA(1) model. Generally, the simulation results showed that the performance of the Bayes estimates using estimated innovations depen...
It is important that the estimates of the parameters of an autoregressive moving-average (ARMA) mode...
summary:A linear moving average model with random coefficients (RCMA) is proposed as more general al...
In this study, we consider a bias reduction of the conditional maximum likelihood estimators for the...
In this paper, we examine some problems that the sampling fluctuation of the estimated autocorrelati...
The likelihoood function of the Gaussian MA(1) zero-mean can be expressed in terms of the variance o...
Dealing with noninvertible, infinite-order moving average (MA) models, we study the asymptotic prope...
We consider time series models of the MA (moving average) family, and deal with the estimation of th...
[[abstract]]The first-order moving average model or MA(1) is given by $X_t=Z_t-\theta_0Z_{t-1}$, wit...
In this thesis, I develop mean likelihood estimation (MeLE) and maximum likelihood estimation (MLE) ...
In this thesis, a Bayesian approach is adopted to handle parameter estimation and model uncertainty ...
International audienceThis paper continues the study of time series models generated by non-negative...
Autoregressive Integrated Moving Average is a model that commonly used to model time series data. On...
Abstract: Moving Average process is a representation of a time series written as a finite linear com...
A limit theory was developed in the papers of Davis and Dunsmuir (1996) and Davis et al. (1995) for ...
. This paper continues the study of time series models generated by non-negative innovations which w...
It is important that the estimates of the parameters of an autoregressive moving-average (ARMA) mode...
summary:A linear moving average model with random coefficients (RCMA) is proposed as more general al...
In this study, we consider a bias reduction of the conditional maximum likelihood estimators for the...
In this paper, we examine some problems that the sampling fluctuation of the estimated autocorrelati...
The likelihoood function of the Gaussian MA(1) zero-mean can be expressed in terms of the variance o...
Dealing with noninvertible, infinite-order moving average (MA) models, we study the asymptotic prope...
We consider time series models of the MA (moving average) family, and deal with the estimation of th...
[[abstract]]The first-order moving average model or MA(1) is given by $X_t=Z_t-\theta_0Z_{t-1}$, wit...
In this thesis, I develop mean likelihood estimation (MeLE) and maximum likelihood estimation (MLE) ...
In this thesis, a Bayesian approach is adopted to handle parameter estimation and model uncertainty ...
International audienceThis paper continues the study of time series models generated by non-negative...
Autoregressive Integrated Moving Average is a model that commonly used to model time series data. On...
Abstract: Moving Average process is a representation of a time series written as a finite linear com...
A limit theory was developed in the papers of Davis and Dunsmuir (1996) and Davis et al. (1995) for ...
. This paper continues the study of time series models generated by non-negative innovations which w...
It is important that the estimates of the parameters of an autoregressive moving-average (ARMA) mode...
summary:A linear moving average model with random coefficients (RCMA) is proposed as more general al...
In this study, we consider a bias reduction of the conditional maximum likelihood estimators for the...