Abstract

Collinearity in the design matrix is a frequent problem in linear regression models, for example, with economic or medical data. Previous standard procedures to mitigate the effects of collinearity include ridge regression and surrogate regression. Ridge regression perturbs the moment matrix X′X→X′X+kIp, while surrogate regression perturbs the design matrix X→XS. More recently, the raise estimators have been introduced, which allow the user to track geometrically the perturbation in the data with X→X~ . The raise estimators are used to reduce collinearity in linear regression models by raising a column in the experimental data matrix, which may be nearly linear with the other columns, while keeping the basic OLS regression model. We give a brief overview of these three ridge-type estimators and discuss practical ways of choosing the required perturbation parameters for each procedure.

Highlights

  • The standard linear regression model can be written as = + with uncorrelated, zero-mean and homoscedastic errors

  • Collinearity is a frequent problem in statistical analysis of data, for example, with ordinary least square linear regression models of economic or medical data

  • Ridge regression is based on a standard numerical technique that is used in computing an inverse of a nearly singular matrix

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Summary

Introduction

Diarmuid O’Driscoll is the head of the Mathematics and Computer Studies Department at Mary Immaculate College, Limerick He was awarded a Travelling Studentship for his MSc at University College Cork in 1977. Collinearity is a frequent problem in statistical analysis of data, for example, with ordinary least square linear regression models of economic or medical data. Ridge regression is based on a standard numerical technique that is used in computing an inverse of a nearly singular matrix. Surrogate regression is based on perturbing the data in a way to allow for more accurate numerical solutions. This technique perturbs the data while allowing the researcher to track the changes in the data while retaining the basic ordinary least square regression model.

Ridge and surrogate estimators
Σ with entries
Raise estimators
Findings
Case study
Full Text
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