Robustifying and simplifying high-dimensional regression with applications to yearly stock return and telematics data
Robustifying and simplifying high-dimensional regression with applications to yearly stock return and telematics data
Blog Article
Abstract The availability of many variables with predictive power makes their selection in a regression context difficult.This study considers robust and understandable low-dimensional estimators as building blocks to improve KNIFE PARTS overall predictive power by optimally combining these building blocks.Our new algorithm is based on generalized cross-validation and builds a predictive model step-by-step from a simple mean to more complex predictive combinations.Empirical applications to annual financial returns and actuarial telematics Outdoor Loveseat with Table data show its usefulness in the financial and insurance industries.
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