We aim at modelling fat-tailed densities whose distributions are unknown but are potentially asymmetric. In this context, the standard normality assumption is not appropriate.In order to make as few distributional assumptions as possible, we use a non-parametric algorithm to model the center of the distribution. Density modelling becomes more difficult as we move further in the tail of the distribution since very few observations fall in the upper tail area. Hence we decide to use the generalized Pareto distribution (GPD) to model the tails of the distribution. The GPD can approximate finite, exponential or subexponential tails. The estimation of the parameters of the GPD is based solely on the extreme observations. An observation is define...
In this paper we propose exact likelihood-based mean-variance efficiency tests of the market portfol...
We work in the context of nonparametric estimation in the regression model. Firstly, we consider obs...
Nous proposons, pour les modèles de régression linéaire où les variables explicatives contiennent de...
In this paper, we consider testing marginal normal distributional assumptions. More precisely, we pr...
We consider the problem of assessing the uncertainty of calibrated parameters in computable general ...
The technique of Monte Carlo (MC) tests [Dwass (1957), Barnard (1963)] provides an attractive method...
In this survey, we review econometric models for conducting statistical inference on option price da...
Discrete time stochastic volatility models (hereafter SVOL) are noticeably harder to estimate than t...
This paper uses asymmetric heteroskedastic normal mixture models to fit return data and to price opt...
We propose methods for testing hypothesis of non-causality at various horizons, as defined in Dufour...
In this paper, we introduce a new approach for volatility modeling in discrete and continuous time. ...
A general estimation approach combining the attractive features of method of moments with the effici...
We discuss statistical inference problems associated with identification and testability in economet...
It is well known that standard asymptotic theory is not valid or is extremely unreliable in models w...
In this paper, we test the international conditional CAPM model of Dumas and Solnik (1993) and the i...
In this paper we propose exact likelihood-based mean-variance efficiency tests of the market portfol...
We work in the context of nonparametric estimation in the regression model. Firstly, we consider obs...
Nous proposons, pour les modèles de régression linéaire où les variables explicatives contiennent de...
In this paper, we consider testing marginal normal distributional assumptions. More precisely, we pr...
We consider the problem of assessing the uncertainty of calibrated parameters in computable general ...
The technique of Monte Carlo (MC) tests [Dwass (1957), Barnard (1963)] provides an attractive method...
In this survey, we review econometric models for conducting statistical inference on option price da...
Discrete time stochastic volatility models (hereafter SVOL) are noticeably harder to estimate than t...
This paper uses asymmetric heteroskedastic normal mixture models to fit return data and to price opt...
We propose methods for testing hypothesis of non-causality at various horizons, as defined in Dufour...
In this paper, we introduce a new approach for volatility modeling in discrete and continuous time. ...
A general estimation approach combining the attractive features of method of moments with the effici...
We discuss statistical inference problems associated with identification and testability in economet...
It is well known that standard asymptotic theory is not valid or is extremely unreliable in models w...
In this paper, we test the international conditional CAPM model of Dumas and Solnik (1993) and the i...
In this paper we propose exact likelihood-based mean-variance efficiency tests of the market portfol...
We work in the context of nonparametric estimation in the regression model. Firstly, we consider obs...
Nous proposons, pour les modèles de régression linéaire où les variables explicatives contiennent de...