In this paper we provide a unified methodology in order to conduct likelihood-based inference on the unknown parameters of a general class of discrete-time stochastic volatility models, characterized by both a leverage effect and jumps in returns. Given the nonlinear/non-Gaussian state-space form, approximating the likelihood for the parameters is conducted with output generated by the particle filter. Methods are employed to ensure that the approximating likelihood is continuous as a function of the unknown parameters thus enabling the use of Newton-Raphson type maximization algorithms. Our approach is robust and efficient relative to alternative Markov Chain Monte Carlo schemes employed in such contexts. In addition it provides a feasible...
In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility mode...
Techniques for simulated maximum likelihood (SML) estimation, filtering, and assessing the fit of st...
<div><p>This article describes a maximum likelihood method for estimating the parameters of the stan...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
Discrete-time stochastic volatility (SV) models have generated a considerable literature in financia...
In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility mode...
This paper proposes the efficient and fast Markov chain Monte Carlo estimation methods for the stoch...
none2In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
In this article we propose a Monte Carlo algorithm for sequential parameter learning for a stochasti...
Abstract: In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volat...
We develop novel methods for estimation and filtering of continuous-time models with stochastic vola...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
Projecte final de Màster Oficial fet en col.laboració amb Universitat de Barcelona. Departament de F...
In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility mode...
Techniques for simulated maximum likelihood (SML) estimation, filtering, and assessing the fit of st...
<div><p>This article describes a maximum likelihood method for estimating the parameters of the stan...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
Discrete-time stochastic volatility (SV) models have generated a considerable literature in financia...
In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility mode...
This paper proposes the efficient and fast Markov chain Monte Carlo estimation methods for the stoch...
none2In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
In this article we propose a Monte Carlo algorithm for sequential parameter learning for a stochasti...
Abstract: In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volat...
We develop novel methods for estimation and filtering of continuous-time models with stochastic vola...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
Projecte final de Màster Oficial fet en col.laboració amb Universitat de Barcelona. Departament de F...
In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility mode...
Techniques for simulated maximum likelihood (SML) estimation, filtering, and assessing the fit of st...
<div><p>This article describes a maximum likelihood method for estimating the parameters of the stan...