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The VIF and MSE in Raise Regression

Román Salmerón Gómez, Ainara Rodríguez Sánchez, Catalina Beatriz García García, José Garcı́a Pérez

2020Mathematics79 citationsDOIOpen Access PDF

Abstract

The raise regression has been proposed as an alternative to ordinary least squares estimation when a model presents collinearity. In order to analyze whether the problem has been mitigated, it is necessary to develop measures to detect collinearity after the application of the raise regression. This paper extends the concept of the variance inflation factor to be applied in a raise regression. The relevance of this extension is that it can be applied to determine the raising factor which allows an optimal application of this technique. The mean square error is also calculated since the raise regression provides a biased estimator. The results are illustrated by two empirical examples where the application of the raise estimator is compared to the application of the ridge and Lasso estimators that are commonly applied to estimate models with multicollinearity as an alternative to ordinary least squares.

Topics & Concepts

MulticollinearityVariance inflation factorCollinearityOrdinary least squaresEstimatorStatisticsRegressionMathematicsEconometricsTotal least squaresMean squared errorRegression analysisRegression diagnosticPolynomial regressionLocal regressionGeneralized least squaresVariance (accounting)EconomicsAccountingAdvanced Statistical Methods and ModelsSpectroscopy and Chemometric AnalysesAdvanced Statistical Process Monitoring