For over a decade nonparametric modelling has been successfully applied to study nonlinear structures in nancial time series It is well known that the usual nonpara metric models often have less than satisfactory performance when dealing with more than one lag When the mean has an additive structure however better estimation methods are available which fully exploit such a structure Although in the past such nonparametric applications had been focused more on the estimation of the conditional mean it is equally if not more important to measure the future risk of the series along with the mean For the volatility function ie the conditional variance given the past a multiplicative structure is more appropriate than an additive one ...
In this paper we derive nonparametric stochastic volatility models in dis-crete time. These models g...
Motivated by a nonparametric GARCH model we consider nonparametric additive regression and autoregre...
The methods and algorithms of time series analysis play an important role in financial econometrics ...
For over a decade, nonparametric modelling has been successfully applied to study nonlinear structur...
In this paper we consider a class of dynamic models in which both the conditional mean and the condi...
We consider a vector conditional heteroskedastic autoregressive nonlinear (CHARN) model in which bot...
We investigate a new separable nonparametric model for time series, which includes many ARCH models ...
In this article, we study a semiparametric multiplicative volatility model, which splits up into a n...
In this thesis a new separable nonparametric volatility model related to the generalized additive no...
This publication is with permission of the rights owner freely accessible due to an Alliance licence...
We consider the estimation and identification of the components ~endogenous and exogenous! of additi...
Local Polynomial Estimation (LPE) is implemented on a dataset of high-frequency foreign exchange (FX...
Empirical modeling of high-frequency currency market data reveals substantial evidence for nonnormal...
In this article we consider a new separable nonparametric volatility model related to the GANARCH mo...
Problems of nonparametric filtering arises frequently in engineering and financial economics. Nonpar...
In this paper we derive nonparametric stochastic volatility models in dis-crete time. These models g...
Motivated by a nonparametric GARCH model we consider nonparametric additive regression and autoregre...
The methods and algorithms of time series analysis play an important role in financial econometrics ...
For over a decade, nonparametric modelling has been successfully applied to study nonlinear structur...
In this paper we consider a class of dynamic models in which both the conditional mean and the condi...
We consider a vector conditional heteroskedastic autoregressive nonlinear (CHARN) model in which bot...
We investigate a new separable nonparametric model for time series, which includes many ARCH models ...
In this article, we study a semiparametric multiplicative volatility model, which splits up into a n...
In this thesis a new separable nonparametric volatility model related to the generalized additive no...
This publication is with permission of the rights owner freely accessible due to an Alliance licence...
We consider the estimation and identification of the components ~endogenous and exogenous! of additi...
Local Polynomial Estimation (LPE) is implemented on a dataset of high-frequency foreign exchange (FX...
Empirical modeling of high-frequency currency market data reveals substantial evidence for nonnormal...
In this article we consider a new separable nonparametric volatility model related to the GANARCH mo...
Problems of nonparametric filtering arises frequently in engineering and financial economics. Nonpar...
In this paper we derive nonparametric stochastic volatility models in dis-crete time. These models g...
Motivated by a nonparametric GARCH model we consider nonparametric additive regression and autoregre...
The methods and algorithms of time series analysis play an important role in financial econometrics ...