The problem of interest is to estimate the concentration curve and the area under the curve (AUC) by estimating the parameters of a linear regression model with autocorrelated error process. We construct a simple linear unbiased estimator of the concentration curve and the AUC. We show that this estimator constructed from a sampling design generated by an appropriate density is asymptotically optimal in the sense that it has exactly the same asymptotic performance as the best linear unbiased estimator (BLUE). Moreover, we prove that the optimal design is robust with respect to a misspecification of the autocovariance function according to a minimax criterion. When repeated observations are available, this estimator is consistent and has an ...
The optimization of machining sequences is not easy because it suffers from two major shortcomings. ...
Learning stochastic models generating sequences has many applications in natural language processing...
This PhD thesis proposes an off-line methodology to enhance robustness to multivariable model predic...
The problem of interest is to estimate the concentration curve and the area under the curve (AUC) by...
We deal with the problem of model robust design of experiments for regression, when the regression m...
Linear regression is used in Market Research but faces difficulties due to multicollinearity. Other ...
This thesis takes place within the theories of nonasymptotic statistics and model selection. Its goa...
Electric machines are modeled in order to predict their performance and to optimize their output. Th...
In this work, we focus on the design and estimation - from partial observations - of graphical model...
In this Phd, we focus on the problem of weekly risk management in electric production. In the first ...
In the last decades, copulas have been more and more used in statistical modeling. Their popularity ...
In the last decades, copulas have been more and more used in statistical modeling. Their popularity ...
Electric machines are modeled in order to predict their performance and to optimize their output. Th...
The prediction of the effective behaviour of heterogeneous random materials as a function of the spa...
The prediction of the effective behaviour of heterogeneous random materials as a function of the spa...
The optimization of machining sequences is not easy because it suffers from two major shortcomings. ...
Learning stochastic models generating sequences has many applications in natural language processing...
This PhD thesis proposes an off-line methodology to enhance robustness to multivariable model predic...
The problem of interest is to estimate the concentration curve and the area under the curve (AUC) by...
We deal with the problem of model robust design of experiments for regression, when the regression m...
Linear regression is used in Market Research but faces difficulties due to multicollinearity. Other ...
This thesis takes place within the theories of nonasymptotic statistics and model selection. Its goa...
Electric machines are modeled in order to predict their performance and to optimize their output. Th...
In this work, we focus on the design and estimation - from partial observations - of graphical model...
In this Phd, we focus on the problem of weekly risk management in electric production. In the first ...
In the last decades, copulas have been more and more used in statistical modeling. Their popularity ...
In the last decades, copulas have been more and more used in statistical modeling. Their popularity ...
Electric machines are modeled in order to predict their performance and to optimize their output. Th...
The prediction of the effective behaviour of heterogeneous random materials as a function of the spa...
The prediction of the effective behaviour of heterogeneous random materials as a function of the spa...
The optimization of machining sequences is not easy because it suffers from two major shortcomings. ...
Learning stochastic models generating sequences has many applications in natural language processing...
This PhD thesis proposes an off-line methodology to enhance robustness to multivariable model predic...