An exact maximum likelihood method is developed for the estimation of parameters in a non-Gaussian nonlinear density function that depends on a latent Gaussian dynamic process with long-memory properties. Our method relies on the method of importance sampling and on a linear Gaussian approximating model from which the latent process can be simulated. Given the presence of a latent long-memory process, we require a modification of the importance sampling technique. In particular, the long-memory process needs to be approximated by a finite dynamic linear process. Two possible approximations are discussed and are compared with each other. We show that an autoregression obtained from minimizing mean squared prediction errors leads to an effect...
In this work we investigate an alternative bootstrap approach based on a result of Ramsey (1974) and...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation in...
In this paper we perform a Monte Carlo study based on three well-known semiparametric estimates for ...
Recent studies have suggested that stock markets' volatility has a type of long-range dependenc...
This paper considers the persistence found in the volatility of many financial time series by means ...
This chapter reviews semiparametric methods of inference on different aspects of long memory time se...
This chapter reviews semiparametric methods of inference on different aspects of long memory time s...
In this work, we investigate an alternative bootstrap approach based on a result of Ramsey [F.L. Ram...
In this work we perform a Monte Carlo experiment to show and compare the performance of a variety of...
This article revises semiparametric methods of inference on different aspects of long mem-ory time s...
Abstract: In this paper, we analyse the finite sample properties of a Quasi-Maximum Likelihood (QML)...
This paper considers a flexible class of time series models generated by Gegenbauer polynomials inco...
Abstract This paper deals with the problem of estimating the unknown parameters in a long-memory pro...
This paper considers estimation and inference in some general non lin-ear time series models which a...
To estimate the long memory series in the framework of state space model is rarely documented althou...
In this work we investigate an alternative bootstrap approach based on a result of Ramsey (1974) and...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation in...
In this paper we perform a Monte Carlo study based on three well-known semiparametric estimates for ...
Recent studies have suggested that stock markets' volatility has a type of long-range dependenc...
This paper considers the persistence found in the volatility of many financial time series by means ...
This chapter reviews semiparametric methods of inference on different aspects of long memory time se...
This chapter reviews semiparametric methods of inference on different aspects of long memory time s...
In this work, we investigate an alternative bootstrap approach based on a result of Ramsey [F.L. Ram...
In this work we perform a Monte Carlo experiment to show and compare the performance of a variety of...
This article revises semiparametric methods of inference on different aspects of long mem-ory time s...
Abstract: In this paper, we analyse the finite sample properties of a Quasi-Maximum Likelihood (QML)...
This paper considers a flexible class of time series models generated by Gegenbauer polynomials inco...
Abstract This paper deals with the problem of estimating the unknown parameters in a long-memory pro...
This paper considers estimation and inference in some general non lin-ear time series models which a...
To estimate the long memory series in the framework of state space model is rarely documented althou...
In this work we investigate an alternative bootstrap approach based on a result of Ramsey (1974) and...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation in...
In this paper we perform a Monte Carlo study based on three well-known semiparametric estimates for ...