Improved Ridge Estimator in Linear Regression with Multicollinearity, Heteroscedastic Errors and Outliers
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Aug 15, 2023
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Ashok Vithoba Dorugade
Y C Mahavidyalaya, Halkarni, Tal-Chandgad, Kolhapur, Maharashtra, India
Abstract
This paper introduces a new estimator, of ridge parameter k for ridge regression and then evaluated by Monte Carlo simulation. We examine the performance of the proposed estimators compared with other well-known estimators for the model with heteroscedastics and/or correlated errors, outlier observations, non-normal errors and suffer from the problem of multicollinearity. It is shown that proposed estimators have a smaller MSE than the ordinary least squared estimator (LS), Hoerl and Kennard (1970) estimator (RR), jackknifed modified ridge (JMR) estimator, and Jackknifed Ridge M‑estimator (JRM).
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