This paper proposes a wavelet (spectral) approach to estimate the parameters of a linear regression model where the regressand and the regressors are persistent processes and contain a measurement error. We propose a wavelet filtering approach which does not require instruments and yields unbiased estimates for the intercept and the slope parameters. Our Monte Carlo results also show that the wavelet approach is particularly effective when measurement errors for the regressand and the regressor are serially correlated. With this paper, we hope to bring a fresh perspective and stimulate further theoretical research in this area
International audienceIn the multidimensional setting, we consider the errors-in-variables model. We...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
Abstract: We investigate global performances of non-linear wavelet estimation in regression models w...
This paper proposes a wavelet (spectral) approach to estimate the parameters of a linear regression ...
This paper considers nonparametric instrumental variable regression when the endogenous variable is ...
In this chapter we perform a Monte Carlo simulation study of the errors-in-variables model examined ...
We consider a regression model with errors-in-variables: $(Y,X)$, where $Y=f(Z)+\xi$ and $X=Z+W$. Ou...
International audienceLong-memory noise is common to many areas of signal processing and can serious...
This dissertation is concerned with the use of wavelet methods in semiparametric partially linear mo...
Semiparametric regression models have a linear part as in the linear regression and a nonlinear part...
This paper develops a wavelet (spectral) approach to test the presence of a unit root in a stochasti...
This paper studies the estimation of time series regression when both regressors and disturbances ha...
Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...
International audienceIn the multidimensional setting, we consider the errors-in-variables model. We...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
Abstract: We investigate global performances of non-linear wavelet estimation in regression models w...
This paper proposes a wavelet (spectral) approach to estimate the parameters of a linear regression ...
This paper considers nonparametric instrumental variable regression when the endogenous variable is ...
In this chapter we perform a Monte Carlo simulation study of the errors-in-variables model examined ...
We consider a regression model with errors-in-variables: $(Y,X)$, where $Y=f(Z)+\xi$ and $X=Z+W$. Ou...
International audienceLong-memory noise is common to many areas of signal processing and can serious...
This dissertation is concerned with the use of wavelet methods in semiparametric partially linear mo...
Semiparametric regression models have a linear part as in the linear regression and a nonlinear part...
This paper develops a wavelet (spectral) approach to test the presence of a unit root in a stochasti...
This paper studies the estimation of time series regression when both regressors and disturbances ha...
Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...
International audienceIn the multidimensional setting, we consider the errors-in-variables model. We...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
Abstract: We investigate global performances of non-linear wavelet estimation in regression models w...