1. What have the authors contributed in "Iterative selection using orthogonal regression techniques" ?
In the former, variables are introduced in the model one at a time depending on their ability to explain variation and the procedure is terminated at some stage following some stopping rule.. Recently, the idea of penalized forward selection has been introduced.. The authors show that in such situations, it is possible to improve stability and computational efficiency of the procedure further by introducing an orthogonalization step.. The authors also consider an aggressive version of the STORM, where a potential predictor will be permanently removed from further consideration if its regression coefficient is estimated as zero at any stage.. The authors shall carry out a detailed simulation study to compare the newly proposed method with existing ones and analyze a real dataset.. The resulting procedure selects sparser models than comparable methods without compromising on predictive power.. At each selection step, variables potentially available to be selected in the model are screened on the basis of their correlation with variables already in the model, thus preventing unnecessary duplication.. The new strategy, called the Selection Technique in Orthogonalized Regression Models ( STORM ), turns out to be extremely successful in reducing the model dimension further and also leads to improved predicting power.
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