## Abstract Ridge regression is a popular parameter estimation method used to address the collinearity problem frequently arising in multiple linear regression. The formulation of the ridge methodology is reviewed and properties of the ridge estimates capsulated. In particular, four rationales lead
Tracing ridge regression coefficients
β Scribed by Gary C. McDonald
- Publisher
- Wiley (John Wiley & Sons)
- Year
- 2010
- Tongue
- English
- Weight
- 145 KB
- Volume
- 2
- Category
- Article
- ISSN
- 0163-1829
- DOI
- 10.1002/wics.126
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β¦ Synopsis
Abstract
Ridge regression is a parameter estimation method used to address the collinearity problem frequently arising in multiple linear regressions. The methodology defines a class of estimators indexed by a nonβnegative scalar parameter, k. When utilizing ridge regression, the analyst eventually chooses a particular value of k which, in turn, uniquely determines the regression parameter estimates within the ridge class. Many such methods of determination, both deterministic and stochastic, have been proposed and evaluated in the literature. A plot of the ridge regression estimates as a function of k, the soβcalled ridge trace, is often used in the selection process. In this article, one such criterion, the square of the correlation coefficient of the actual dependent variable and its predicted values, is examined. It can be used, along with a ridge trace and other quantitative measures, as another important tradeoff between using ordinary least squares estimates and estimates from the ridge class. WIREs Comp Stat 2010 2 695β703 DOI: 10.1002/wics.126
This article is categorized under:
Statistical Models > Linear Models
Algorithms and Computational Methods > Least Squares
π SIMILAR VOLUMES
Ridge regression (RR) and principal component regression (PCR) are two popular methods intended to overcome the problem of multicollinearity which arises with spectral data. The present study compares the performances of RR and PCR in addition to ordinary least squares (OLS) and partial least square