Prediction performance does not always reflect the estimation behaviour of a method. High error in estimation may necessarily not result in high prediction error, but can lead to an unreliable prediction if test data lie in a slightly different subspace than the training data. In addition, high estimation error often leads to unstable estimates, and consequently, the estimated effect of predictors on the response can not have a valid interpretation. Many research fields show more interest in the effect of predictor variables than actual prediction performance. This study compares some newly-developed (envelope) and well-established (PCR, PLS) estimation methods using simulated data with specifically designed properties such as Multicollinea...
It is non-trivial to select the appropriate prediction technique from a variety of existing techniqu...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
We introduce a new approach to variable selection, called Predictive Correlation Screening, for pred...
Prediction performance does not always reflect the estimation behaviour of a method. High error in e...
Prediction performance does not always reflect the estimation behaviour of a method. High error in e...
While data science is battling to extract information from the enormous explosion of data, many esti...
While data science is battling to extract information from the enormous explosion of data, many esti...
A linear regression model defines a linear relationship between two or more random variables. The ra...
A linear regression model defines a linear relationship between two or more random variables. The r...
textabstractForecasting with many predictors is of interest, for instance, in macroeconomics and fin...
Several advantages to the use of factor scores as independent variables in a multiple regression equ...
We develop an inference framework for the difference in errors between 2 prediction procedures. The ...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
It is non-trivial to select the appropriate prediction technique from a variety of existing techniqu...
It is non-trivial to select the appropriate prediction technique from a variety of existing techniqu...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
We introduce a new approach to variable selection, called Predictive Correlation Screening, for pred...
Prediction performance does not always reflect the estimation behaviour of a method. High error in e...
Prediction performance does not always reflect the estimation behaviour of a method. High error in e...
While data science is battling to extract information from the enormous explosion of data, many esti...
While data science is battling to extract information from the enormous explosion of data, many esti...
A linear regression model defines a linear relationship between two or more random variables. The ra...
A linear regression model defines a linear relationship between two or more random variables. The r...
textabstractForecasting with many predictors is of interest, for instance, in macroeconomics and fin...
Several advantages to the use of factor scores as independent variables in a multiple regression equ...
We develop an inference framework for the difference in errors between 2 prediction procedures. The ...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
It is non-trivial to select the appropriate prediction technique from a variety of existing techniqu...
It is non-trivial to select the appropriate prediction technique from a variety of existing techniqu...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
We introduce a new approach to variable selection, called Predictive Correlation Screening, for pred...