On Tuning Parameter Selection in Model Selection and Model Averaging: A Monte Carlo Study
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- Abdullah S. Al-Jawarneh & Ahmed R. M. Alsayed & Heba N. Ayyoub & Mohd Tahir Ismail & Siok Kun Sek & Kivanç Halil Ariç & Giancarlo Manzi, 2024. "Enhancing Model Selection by Obtaining Optimal Tuning Parameters in Elastic-Net Quantile Regression, Application to Crude Oil Prices," JRFM, MDPI, vol. 17(8), pages 1-19, July.
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Keywords
Mallows criterion; model averaging; model selection; shrinkage; tuning parameter choice;All these keywords.
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