The Gaussian kernel density estimator is known to have substantial problems for bounded random variables with high density at the boundaries. For independent and identically distributed data, several solutions have been put forward to solve this boundary problem. In this paper, we propose the gamma kernel estimator as a density estimator for positive time series data from a stationary [alpha]-mixing process. We derive the mean (integrated) squared error and asymptotic normality. In a Monte Carlo simulation, we generate data from an autoregressive conditional duration model and a stochastic volatility model. We study the local and global behavior of the estimator and we find that the gamma kernel estimator outperforms the local linear densit...
We consider discrete time models for asset prices with a stationary volatility process. We aim at es...
Abstract: We consider discrete time models for asset prices with a stationary volatility process. We...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
The Gaussian kernel density estimator is known to have substantial problems for bounded random varia...
The Gaussian kernel density estimator is known to have substantial problems for bounded random varia...
Standard fixed symmetric kernel type density estimators are known to encounter problems for positive...
In this paper, we consider the non-parametric estimation for a density and hazard rate function for ...
In this paper we consider the nonparametric estimation for a density and hazard rate function for ri...
In this paper, we study the kernel methods for density estimation of stationary samples under genera...
We consider a continuous-time stochastic volatility model. The model contains a stationary volatilit...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
In this paper we estimate density functions for positive multivariate data. We propose a semiparamet...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
Abstract. We propose a new type of non parametric density estimators fitted to nonnegative random va...
We consider discrete time models for asset prices with a stationary volatility process. We aim at es...
Abstract: We consider discrete time models for asset prices with a stationary volatility process. We...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
The Gaussian kernel density estimator is known to have substantial problems for bounded random varia...
The Gaussian kernel density estimator is known to have substantial problems for bounded random varia...
Standard fixed symmetric kernel type density estimators are known to encounter problems for positive...
In this paper, we consider the non-parametric estimation for a density and hazard rate function for ...
In this paper we consider the nonparametric estimation for a density and hazard rate function for ri...
In this paper, we study the kernel methods for density estimation of stationary samples under genera...
We consider a continuous-time stochastic volatility model. The model contains a stationary volatilit...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
In this paper we estimate density functions for positive multivariate data. We propose a semiparamet...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
Abstract. We propose a new type of non parametric density estimators fitted to nonnegative random va...
We consider discrete time models for asset prices with a stationary volatility process. We aim at es...
Abstract: We consider discrete time models for asset prices with a stationary volatility process. We...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...