
doi: 10.3390/math13010015
In this paper, we propose three stochastic restricted biased estimators for the linear regression model. These new estimators generalize the least squares estimator, mixed estimator, and biased estimator. We derive the necessary and sufficient conditions for the superiority of the proposed estimators over existing ones, as well as their relative superiority among each other, using the mean squared error matrix as a criterion. A simulation study is conducted to validate the theoretical findings, and two real-world examples are provided to demonstrate the practical advantages of the proposed estimators.
mean squared error matrix, QA1-939, stochastic restricted biased estimator, biased estimator, Mathematics, mixed estimator
mean squared error matrix, QA1-939, stochastic restricted biased estimator, biased estimator, Mathematics, mixed estimator
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