Recently, Fridman and Harris proposed a method which allows one to approximate the likelihood of the basic stochastic volatility model. They also propose to estimate the parameters of such a model maximising the approximate likelihood by an algorithm which makes use of numerical derivatives. In this paper we propose an extension of their method which enables the computation of the first and second analytical derivatives of the approximate likelihood. As will be shown, these derivatives may be used to maximize the approximate likelihood through the Newton-Raphson algorithm, with a saving in the computational time. Moreover, these derivatives approximate the corresponding derivatives of the exact likelihood. In particular, the second derivati...
Abstract: In this paper the Laplace approximation is used to perform classical and Bayesian analyses...
This paper overviews maximum likelihood and Gaussian methods of estimating contin-uous time models u...
New strategies for the implementation of maximum likelihood estimation of nonlinear time series mode...
A likelihood approach for fitting asymmetric stochastic volatility models is proposed. It is first s...
In this paper we develop and implement a method for maximum simulated likelihood estimation of the c...
International audienceIn the case of incomplete data we give general relationships between the first...
Latent variable models have been playing a central role in psychometrics and related fields. In many...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...
The objective of this paper is parametric inference for stochastic volatility models. We consider a ...
A method for estimating the parameters of stochastic differential equations (SDEs) by simulated maxi...
textabstractQuasi maximum likelihood estimation and inference in multivariate volatility models rema...
AbstractThis paper develops two algorithms. Algorithm 1 computes the exact, Gaussian, log-likelihood...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation in...
In this paper a method is developed and implemented to provide the simulated maximum likelihood esti...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
Abstract: In this paper the Laplace approximation is used to perform classical and Bayesian analyses...
This paper overviews maximum likelihood and Gaussian methods of estimating contin-uous time models u...
New strategies for the implementation of maximum likelihood estimation of nonlinear time series mode...
A likelihood approach for fitting asymmetric stochastic volatility models is proposed. It is first s...
In this paper we develop and implement a method for maximum simulated likelihood estimation of the c...
International audienceIn the case of incomplete data we give general relationships between the first...
Latent variable models have been playing a central role in psychometrics and related fields. In many...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...
The objective of this paper is parametric inference for stochastic volatility models. We consider a ...
A method for estimating the parameters of stochastic differential equations (SDEs) by simulated maxi...
textabstractQuasi maximum likelihood estimation and inference in multivariate volatility models rema...
AbstractThis paper develops two algorithms. Algorithm 1 computes the exact, Gaussian, log-likelihood...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation in...
In this paper a method is developed and implemented to provide the simulated maximum likelihood esti...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
Abstract: In this paper the Laplace approximation is used to perform classical and Bayesian analyses...
This paper overviews maximum likelihood and Gaussian methods of estimating contin-uous time models u...
New strategies for the implementation of maximum likelihood estimation of nonlinear time series mode...