We propose the use of indirect inference estimation to conduct inference in complex locally stationary models. We develop a local indirect inference algorithm and establish the asymptotic properties of the proposed estimator. Due to the nonparametric nature of locally stationary models, the resulting indirect inference estimator exhibits nonparametric rates of convergence. We validate our methodology with simulation studies in the confines of a locally stationary moving average model and a new locally stationary multiplicative stochastic volatility model. Using this indirect inference methodology and the new locally stationary volatility model, we obtain evidence of non-linear, time-varying volatility trends for monthly returns on several F...
We propose the indirect inference estimator as a consistent method to estimate the parameters of a s...
We consider a non-stationary regression type model for stock returns in which the innovations are de...
International audienceMotivated by the problem of forecasting demand and offer curves, we introduce ...
In this article, we study a semiparametric multiplicative volatility model, which splits up into a n...
In this article we develop robust indirect inference for a variety of models in a unified framework....
The econometric literature of high frequency data often relies on moment estimators which are derive...
This paper aims to develop new methods for statistical inference in a class of stochastic volatility...
Stochastic volatility models are able to reproduce many empirical regularities in financial time-ser...
We give a general time-varying parameter model, where the multidimensional parameter possibly includ...
In this paper we consider a class of dynamic models in which both the conditional mean and the condi...
We consider a model with both a parametric global trend and a nonparametric local trend. This model ...
We discuss an estimation procedure for continuous-time models based on discrete sampled data with a ...
The study of locally stationary processes contains theory and methods about a class of processes tha...
Parametric models are used to understand dynamical systems and predict its future behavior. It is di...
The delta method and continuous mapping theorem are among the most extensively used tools in asympto...
We propose the indirect inference estimator as a consistent method to estimate the parameters of a s...
We consider a non-stationary regression type model for stock returns in which the innovations are de...
International audienceMotivated by the problem of forecasting demand and offer curves, we introduce ...
In this article, we study a semiparametric multiplicative volatility model, which splits up into a n...
In this article we develop robust indirect inference for a variety of models in a unified framework....
The econometric literature of high frequency data often relies on moment estimators which are derive...
This paper aims to develop new methods for statistical inference in a class of stochastic volatility...
Stochastic volatility models are able to reproduce many empirical regularities in financial time-ser...
We give a general time-varying parameter model, where the multidimensional parameter possibly includ...
In this paper we consider a class of dynamic models in which both the conditional mean and the condi...
We consider a model with both a parametric global trend and a nonparametric local trend. This model ...
We discuss an estimation procedure for continuous-time models based on discrete sampled data with a ...
The study of locally stationary processes contains theory and methods about a class of processes tha...
Parametric models are used to understand dynamical systems and predict its future behavior. It is di...
The delta method and continuous mapping theorem are among the most extensively used tools in asympto...
We propose the indirect inference estimator as a consistent method to estimate the parameters of a s...
We consider a non-stationary regression type model for stock returns in which the innovations are de...
International audienceMotivated by the problem of forecasting demand and offer curves, we introduce ...