Dealing with noninvertible, infinite-order moving average (MA) models, we study the asymptotic properties of an estimator of the noninvertible coefficient. The estimator is constructed acting as if the data were generated from a Gaussian MA process. Allowing for two cases on the initial values of the error process, we first discuss the condition for the existence of a consistent estimator. We then compute the probability of the estimator occurring at the boundary of the invertibility region. Some approximations are also suggested to the limiting distribution of the normalized estimator.
This paper studies the asymptotic theory of least squares estimation in a threshold moving average m...
In this paper, we examine some problems that the sampling fluctuation of the estimated autocorrelati...
Abstract: In this work, Bayes estimation of the first order moving average model (MA(1)) were studie...
A procedure for solving exact maximum likelihood estimation (MLE) is proposed for non-invertible non...
The article presents information on exact maximum likelihood estimation of regression models with fi...
Although considerable attention has recently been paid to the behavior of the maximum likelihood est...
We consider an approximate maximum likelihood algorithm for estimating parameters of possibly non-ca...
[[abstract]]A procedure for computing exact maximum likelihood estimates (MLEs) is proposed for non-...
A limit theory was developed in the papers of Davis and Dunsmuir (1996) and Davis et al. (1995) for ...
[[abstract]]The first-order moving average model or MA(1) is given by $X_t=Z_t-\theta_0Z_{t-1}$, wit...
The likelihoood function of the Gaussian MA(1) zero-mean can be expressed in terms of the variance o...
We consider time series models of the MA (moving average) family, and deal with the estimation of th...
AbstractAn approximate maximum likelihood procedure is proposed for the estimation of parameters in ...
A limit theory was developed in the papers of Davis and Dunsmuir (1996) and Davis et al. (1995) for ...
summary:A linear moving average model with random coefficients (RCMA) is proposed as more general al...
This paper studies the asymptotic theory of least squares estimation in a threshold moving average m...
In this paper, we examine some problems that the sampling fluctuation of the estimated autocorrelati...
Abstract: In this work, Bayes estimation of the first order moving average model (MA(1)) were studie...
A procedure for solving exact maximum likelihood estimation (MLE) is proposed for non-invertible non...
The article presents information on exact maximum likelihood estimation of regression models with fi...
Although considerable attention has recently been paid to the behavior of the maximum likelihood est...
We consider an approximate maximum likelihood algorithm for estimating parameters of possibly non-ca...
[[abstract]]A procedure for computing exact maximum likelihood estimates (MLEs) is proposed for non-...
A limit theory was developed in the papers of Davis and Dunsmuir (1996) and Davis et al. (1995) for ...
[[abstract]]The first-order moving average model or MA(1) is given by $X_t=Z_t-\theta_0Z_{t-1}$, wit...
The likelihoood function of the Gaussian MA(1) zero-mean can be expressed in terms of the variance o...
We consider time series models of the MA (moving average) family, and deal with the estimation of th...
AbstractAn approximate maximum likelihood procedure is proposed for the estimation of parameters in ...
A limit theory was developed in the papers of Davis and Dunsmuir (1996) and Davis et al. (1995) for ...
summary:A linear moving average model with random coefficients (RCMA) is proposed as more general al...
This paper studies the asymptotic theory of least squares estimation in a threshold moving average m...
In this paper, we examine some problems that the sampling fluctuation of the estimated autocorrelati...
Abstract: In this work, Bayes estimation of the first order moving average model (MA(1)) were studie...