This paper is concerned with particle filtering for α-stable stochastic volatility models. The α-stable distribution provides a flexible framework for modeling asymmetry and heavy tails, which is useful when modeling financial returns. An issue with this distributional assumption is the lack of a closed form for the probability density function. To estimate the volatility of financial returns in this setting, we develop a novel auxiliary particle filter. The algorithm we develop can be easily applied to any hidden Markov model for which the likelihood function is intractable or computationally expensive. The approximate target distribution of our auxiliary filter is based on the idea of approximate Bayesian computation (ABC). ABC methods al...
This article presents a new particle filter algorithm which uses random quasi-Monte-Carlo to propaga...
The novel research work presented in this thesis consists of an offline, iterated particle filter to...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
International audienceA simple method is proposed to estimate stochastic volatility models with Mark...
Discrete-time stochastic volatility (SV) models have generated a considerable literature in financia...
AbstractStochastic Volatility (SV) model usually assumes that the distribution of asset returns cond...
The Stochastic Volatility (SV) model and the Multivariate Stochastic Volatility (MSV) model are powe...
textThe Bayesian approach has been developed in various areas and has come to be part of main stream...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
This article designs a Sequential Monte Carlo (SMC) algorithm for estimation of Bayesian semi-parame...
For almost any type of financial modelling exercise, the most fundamental problem is findingsuitablest...
Time-varying volatility is common in macroeconomic data and has been incorporated into macroeconomic...
We develop novel methods for estimation and filtering of continuous-time models with stochastic vola...
This article presents a new particle filter algorithm which uses random quasi-Monte-Carlo to propaga...
The novel research work presented in this thesis consists of an offline, iterated particle filter to...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
International audienceA simple method is proposed to estimate stochastic volatility models with Mark...
Discrete-time stochastic volatility (SV) models have generated a considerable literature in financia...
AbstractStochastic Volatility (SV) model usually assumes that the distribution of asset returns cond...
The Stochastic Volatility (SV) model and the Multivariate Stochastic Volatility (MSV) model are powe...
textThe Bayesian approach has been developed in various areas and has come to be part of main stream...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
This article designs a Sequential Monte Carlo (SMC) algorithm for estimation of Bayesian semi-parame...
For almost any type of financial modelling exercise, the most fundamental problem is findingsuitablest...
Time-varying volatility is common in macroeconomic data and has been incorporated into macroeconomic...
We develop novel methods for estimation and filtering of continuous-time models with stochastic vola...
This article presents a new particle filter algorithm which uses random quasi-Monte-Carlo to propaga...
The novel research work presented in this thesis consists of an offline, iterated particle filter to...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...