linear model

Variable selection and importance in presence of high collinearity: an application to the prediction of lean body mass from multi-frequency bioelectrical impedance

In prediction problems both response and covariates may have high
correlation with a second group of influential regressors, that can be
considered as background variables. An important challenge is to
perform variable selection and importance assessment among the
covariates in the presence of these variables. A clinical example is
the prediction of the lean body mass (response) from bioimpedance
(covariates), where anthropometric measures play the role of background
variables. We introduce a reduced dataset in which the variables

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