In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for weakly dependent data. We show that the rates of convergence which are optimal in the case of i.i.d. data are also (almost) attained for strongly mixing observations, provided the mixing coefficients decay fast enough. The results are applied to a discretely observed continuous-time stochastic volatility model
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
This paper studies the estimation of a density in the convolution density model from weakly dependen...
This paper studies the estimation of a density in the convolution density model from weakly dependen...
In this note, we consider the estimation of an unknown function $f$ for weakly dependent data ($\alp...
short noteWe consider the density convolution model: $Y=X+\epsilon$, where $X$ and $\epsilon$ are in...
short noteWe consider the density convolution model: $Y=X+\epsilon$, where $X$ and $\epsilon$ are in...
20 pagesWe consider the model: Y = X+e, where X and e are independent random variables. The density ...
20 pagesWe consider the model: Y = X+e, where X and e are independent random variables. The density ...
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
This paper studies the estimation of a density in the convolution density model from weakly dependen...
This paper studies the estimation of a density in the convolution density model from weakly dependen...
In this note, we consider the estimation of an unknown function $f$ for weakly dependent data ($\alp...
short noteWe consider the density convolution model: $Y=X+\epsilon$, where $X$ and $\epsilon$ are in...
short noteWe consider the density convolution model: $Y=X+\epsilon$, where $X$ and $\epsilon$ are in...
20 pagesWe consider the model: Y = X+e, where X and e are independent random variables. The density ...
20 pagesWe consider the model: Y = X+e, where X and e are independent random variables. The density ...
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...
Under the assumption that both convolution densities, g and q, have finite degrees of smoothness, we...