AbstractIn this paper, we consider a semiparametric modeling with multi-indices when neither the response nor the predictors can be directly observed and there are distortions from some multiplicative factors. In contrast to the existing methods in which the response distortion deteriorates estimation efficacy even for a simple linear model, the dimension reduction technique presented in this paper interestingly does not have to account for distortion of the response variable. The observed response can be used directly whether distortion is present or not. The resulting dimension reduction estimators are shown to be consistent and asymptotically normal. The results can be employed to test whether the central dimension reduction subspace has...
Existing dimension reduction methods in multivariate analysis have focused on reducing sets of rando...
Existing dimension reduction methods in multivariate analysis have focused on reducing sets of rando...
International audienceA semiparametric regression model of a q-dimensional multivariate response y o...
AbstractIn this paper, we consider a semiparametric modeling with multi-indices when neither the res...
This thesis has two themes: (1) the predictive potential of principal components in regression, and ...
Vita.In many regression models one or more of the covariates are measured with error. It is well kno...
Vita.In many regression models one or more of the covariates are measured with error. It is well kno...
In this paper, we consider a semiparametric single index regression model involving a real dependent...
International audienceThe statistical problem of estimating the effective dimension-reduction (EDR) ...
Dimension reduction is helpful and often necessary in exploring nonlinear or nonparametric regressio...
Sufficient dimension reduction methodologies in regression have been developed in the past decade, f...
The statistical problem of estimating the effective dimension-reduction (EDR) subspace in the multi-...
International audienceA semiparametric regression model of a q-dimensional multivariate response y o...
Abstract. We provide a remedy for two concerns that have dogged the use of principal components in r...
International audienceIn regression with a high-dimensional predictor vector, dimension reduction me...
Existing dimension reduction methods in multivariate analysis have focused on reducing sets of rando...
Existing dimension reduction methods in multivariate analysis have focused on reducing sets of rando...
International audienceA semiparametric regression model of a q-dimensional multivariate response y o...
AbstractIn this paper, we consider a semiparametric modeling with multi-indices when neither the res...
This thesis has two themes: (1) the predictive potential of principal components in regression, and ...
Vita.In many regression models one or more of the covariates are measured with error. It is well kno...
Vita.In many regression models one or more of the covariates are measured with error. It is well kno...
In this paper, we consider a semiparametric single index regression model involving a real dependent...
International audienceThe statistical problem of estimating the effective dimension-reduction (EDR) ...
Dimension reduction is helpful and often necessary in exploring nonlinear or nonparametric regressio...
Sufficient dimension reduction methodologies in regression have been developed in the past decade, f...
The statistical problem of estimating the effective dimension-reduction (EDR) subspace in the multi-...
International audienceA semiparametric regression model of a q-dimensional multivariate response y o...
Abstract. We provide a remedy for two concerns that have dogged the use of principal components in r...
International audienceIn regression with a high-dimensional predictor vector, dimension reduction me...
Existing dimension reduction methods in multivariate analysis have focused on reducing sets of rando...
Existing dimension reduction methods in multivariate analysis have focused on reducing sets of rando...
International audienceA semiparametric regression model of a q-dimensional multivariate response y o...