This paper considers the problem of kernel regression and classification with possibly unobservable response variables in the data, where the mechanism that causes the absence of information is unknown and can depend on both predictors and the response variables. Our proposed approach involves two steps: In the first step, we construct a family of models (possibly infinite dimensional) indexed by the unknown parameter of the missing probability mechanism. In the second step, a search is carried out to find the empirically optimal member of an appropriate cover (or subclass) of the underlying family in the sense of minimizing the mean squared prediction error. The main focus of the paper is to look into the theoretical properties of these es...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
We present methods for dealing with missing variables in the context of Gaussian Processes and Suppo...
This paper considers the problem of kernel regression and classification with possibly unobservable ...
This paper considers the problem of kernel regression and classification with possibly unobservable ...
This paper considers the problem of kernel regression and classification with possibly unobservable ...
Includes bibliographical references (pages 78-80)The problem of estimating the regression function f...
We discuss efficient estimation in regression models that are de- fined by a finite-dimensional para...
Includes bibliographical references (pages 51-52)One of the nonparametric approaches to estimate a r...
Vita.We develop methodology for the estimation of regression parameters in models where one of the ...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
This dissertation deals with the practical solution of estimation and classification problems which ...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
We present methods for dealing with missing variables in the context of Gaussian Processes and Suppo...
This paper considers the problem of kernel regression and classification with possibly unobservable ...
This paper considers the problem of kernel regression and classification with possibly unobservable ...
This paper considers the problem of kernel regression and classification with possibly unobservable ...
Includes bibliographical references (pages 78-80)The problem of estimating the regression function f...
We discuss efficient estimation in regression models that are de- fined by a finite-dimensional para...
Includes bibliographical references (pages 51-52)One of the nonparametric approaches to estimate a r...
Vita.We develop methodology for the estimation of regression parameters in models where one of the ...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
This dissertation deals with the practical solution of estimation and classification problems which ...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
We present methods for dealing with missing variables in the context of Gaussian Processes and Suppo...