We study nonparametric estimation of the volatility function of a diffusion process from discrete data, when the data are blurred by additional noise. This noise can be white or correlated, and serves as a model for microstructure effects in financial modeling, when the data are given on an intra-day scale. By developing pre-averaging techniques combined with wavelet thresholding, we construct adaptive estimators that achieve a nearly optimal rate within a large scale of smoothness constraints of Besov type. Since the underlying signal (the volatility) is genuinely random, we propose a new criterion to assess the quality of estimation; we retrieve the usual minimax theory when this approach is restricted to deterministic volatility.Adaptive...
The basic model for high-frequency data in finance is considered, where an efficient price process i...
This paper treats the multiscale estimation of integrated volatility of an Itˆo process immersed in ...
AbstractWe study the nonparametric estimation of the coefficients of a 1-dimensional diffusion proce...
We study nonparametric estimation of the volatility function of a diffusion process from discrete da...
We study nonparametric estimation of the diffusion coefficient from discrete data, when the observat...
AbstractThis paper introduces adaptiveness to the non-parametric estimation of volatility in high fr...
We study nonparametric estimation of the diffusion coefficient from discrete data, when the observat...
In this paper, we present a test for the maximal rank of the volatility process in continuous diffus...
We consider the problem of testing the parametric form of the volatility for high frequency data. It...
This paper presents a generalized pre-averaging approach for estimating the integrated volatility. T...
The estimation of volatility for high-frequency data under market microstructure noise has been exte...
Recorded prices are known to diverge from their "efficient" values due to the presence of market mic...
We estimate the volatility function of a diffusion process on the real line on the basis of low freq...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...
We consider the properties of three estimation methods for integrated volatility, i.e. realized vola...
The basic model for high-frequency data in finance is considered, where an efficient price process i...
This paper treats the multiscale estimation of integrated volatility of an Itˆo process immersed in ...
AbstractWe study the nonparametric estimation of the coefficients of a 1-dimensional diffusion proce...
We study nonparametric estimation of the volatility function of a diffusion process from discrete da...
We study nonparametric estimation of the diffusion coefficient from discrete data, when the observat...
AbstractThis paper introduces adaptiveness to the non-parametric estimation of volatility in high fr...
We study nonparametric estimation of the diffusion coefficient from discrete data, when the observat...
In this paper, we present a test for the maximal rank of the volatility process in continuous diffus...
We consider the problem of testing the parametric form of the volatility for high frequency data. It...
This paper presents a generalized pre-averaging approach for estimating the integrated volatility. T...
The estimation of volatility for high-frequency data under market microstructure noise has been exte...
Recorded prices are known to diverge from their "efficient" values due to the presence of market mic...
We estimate the volatility function of a diffusion process on the real line on the basis of low freq...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...
We consider the properties of three estimation methods for integrated volatility, i.e. realized vola...
The basic model for high-frequency data in finance is considered, where an efficient price process i...
This paper treats the multiscale estimation of integrated volatility of an Itˆo process immersed in ...
AbstractWe study the nonparametric estimation of the coefficients of a 1-dimensional diffusion proce...