The paper introduces an automatic procedure for the parametric transformation of the response in regression models to approximate normality. We consider the Box–Cox transformation and its generalization to the extended Yeo–Johnson transformation which allows for both positive and negative responses. A simulation study illuminates the superior comparative properties of our automatic procedure for the Box–Cox transformation. The usefulness of our procedure is demonstrated on four sets of data, two including negative observations. An important theoretical development is an extension of the Bayesian Information Criterion (BIC) to the comparison of models following the deletion of observations, the number deleted here depending on the transforma...
We investigate power transformations in non-linear regression problems when there is a physical mode...
In this study, we construct a feasible region, in which we maximize the likelihood function, by usin...
The assumption of normality provides the customary powerful and convenient way of analyzing linear r...
The paper introduces an automatic procedure for the parametric transformation of the response in reg...
The Box-Cox power transformation family for nonnegative responses in linear models has a long and in...
We analyse data on the performance of investment funds, 99 out of 309 of which report a loss, and on...
We analyse data on the performance of investment funds, 99 out of 309 of which report a loss, and on...
The Box-Cox power transformation family for non-negative responses in linear models has a long and i...
Transformation of a response variable can greatly expand the class of problems for which the linear ...
The use of the Box-Cox family of transformations is a popular approach to make data behave according...
We consider the problem of simultaneous variable and transformation selection for linear regression....
Nonlinear regression problems can often be reduced to linearity by transforming the response variabl...
In regression analysis, it is frequently required to transform the dependent variable in order to ob...
Abstract: Nonparametric response transformations for regression models are of great interest and use...
A new graphical method for assessing parametric transformations of the response in linear regression...
We investigate power transformations in non-linear regression problems when there is a physical mode...
In this study, we construct a feasible region, in which we maximize the likelihood function, by usin...
The assumption of normality provides the customary powerful and convenient way of analyzing linear r...
The paper introduces an automatic procedure for the parametric transformation of the response in reg...
The Box-Cox power transformation family for nonnegative responses in linear models has a long and in...
We analyse data on the performance of investment funds, 99 out of 309 of which report a loss, and on...
We analyse data on the performance of investment funds, 99 out of 309 of which report a loss, and on...
The Box-Cox power transformation family for non-negative responses in linear models has a long and i...
Transformation of a response variable can greatly expand the class of problems for which the linear ...
The use of the Box-Cox family of transformations is a popular approach to make data behave according...
We consider the problem of simultaneous variable and transformation selection for linear regression....
Nonlinear regression problems can often be reduced to linearity by transforming the response variabl...
In regression analysis, it is frequently required to transform the dependent variable in order to ob...
Abstract: Nonparametric response transformations for regression models are of great interest and use...
A new graphical method for assessing parametric transformations of the response in linear regression...
We investigate power transformations in non-linear regression problems when there is a physical mode...
In this study, we construct a feasible region, in which we maximize the likelihood function, by usin...
The assumption of normality provides the customary powerful and convenient way of analyzing linear r...