International audienceOrdinary least square is the common way to estimate linear regression models. When inputs are correlated or when they are too numerous, regression methods using derived inputs directions or shrinkage methods can be efficient alternatives. Methods using derived inputs directions build new uncorrelated variables as linear combination of the initial inputs, whereas shrinkage methods introduce regularization and variable selection by penalizing the usual least square criterion. Both kinds of methods are presented and illustrated thanks to the R software on an astronomical dataset
The abundance of available digital big data has created new challenges in identifying relevant varia...
International audienceThis chapter deals with the very simple situation where the mean of a variable...
The family of inverse regression estimators that was recently proposed by Cook and Ni has proven eff...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
Ordinary least square is the common way to estimate linear regression models. When inputs are correl...
Ordinary least square is the common way to estimate linear regression models. When inputs are correl...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceBiased regression is an alternative to ordinary least squares (OLS) regression...
In this section some aspects of linear statistical models or regression models will be reviewed. Top...
The abundance of available digital big data has created new challenges in identifying relevant varia...
International audienceThis chapter deals with the very simple situation where the mean of a variable...
The family of inverse regression estimators that was recently proposed by Cook and Ni has proven eff...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
Ordinary least square is the common way to estimate linear regression models. When inputs are correl...
Ordinary least square is the common way to estimate linear regression models. When inputs are correl...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceOrdinary least square is the common way to estimate linear regression models. ...
International audienceBiased regression is an alternative to ordinary least squares (OLS) regression...
In this section some aspects of linear statistical models or regression models will be reviewed. Top...
The abundance of available digital big data has created new challenges in identifying relevant varia...
International audienceThis chapter deals with the very simple situation where the mean of a variable...
The family of inverse regression estimators that was recently proposed by Cook and Ni has proven eff...