Improved robust ridge regression estimates

Authors

  • Вера Ильинична Грицюк Kharkov National University of Radioelectronics pr. Lenina, 14, Kharkov, 61166, Ukraine. E-mail:, Ukraine

DOI:

https://doi.org/10.15587/1729-4061.2015.37316

Keywords:

M-estimates, Winsor's principle, robust ridge estimates

Abstract

In multiple linear regression when the predictors are strongly correlated, the least-squares estimates (LSE) usually provide inaccurate predictions. Ridge regression, based on the minimization of a quadratic loss function, is sensitive to outliers. Two smoothly redescending ψ-functions based on the Winsor's principle, which lead to asymptotically efficient estimates were considered. The method of iteratively reweighted least squares (IRLS) based on the proposed ψ-functions can be used to produce the resulting robust ridge estimates for identifying outliers and ignoring zero-weight outliers. Examples, selected from the relevant literature, are used for illustrative purposes. It is possible to obtain convergence to the final estimates of the coefficients with fewer iterations than without using ridge regression. The combined robust and ridge estimates result in stable coefficients and balances that help in determining the true coefficients and outliers.

Author Biography

Вера Ильинична Грицюк, Kharkov National University of Radioelectronics pr. Lenina, 14, Kharkov, 61166, Ukraine. E-mail:

Candidate of technical science, associate professor

Department of design and operation of electronic devices

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Published

2015-02-25

How to Cite

Грицюк, В. И. (2015). Improved robust ridge regression estimates. Eastern-European Journal of Enterprise Technologies, 1(9(73), 53–57. https://doi.org/10.15587/1729-4061.2015.37316

Issue

Section

Information and controlling system