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arxiv: 1503.05160 · v1 · pith:76LPXJXVnew · submitted 2015-03-17 · 🧮 math.ST · stat.AP· stat.ML· stat.TH

Improved LASSO

classification 🧮 math.ST stat.APstat.MLstat.TH
keywords lassoparameterbeencoefficientsimprovedshrinkagestein-typevector
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We propose an improved LASSO estimation technique based on Stein-rule. We shrink classical LASSO estimator using preliminary test, shrinkage, and positive-rule shrinkage principle. Simulation results have been carried out for various configurations of correlation coefficients ($r$), size of the parameter vector ($\beta$), error variance ($\sigma^2$) and number of non-zero coefficients ($k$) in the model parameter vector. Several real data examples have been used to demonstrate the practical usefulness of the proposed estimators. Our study shows that the risk ordering given by LSE $>$ LASSO $>$ Stein-type LASSO $>$ Stein-type positive rule LASSO, remains the same uniformly in the divergence parameter $\Delta^2$ as in the traditional case.

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