A bayesian predictive approach to the selection of variables in multiple regression |
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Authors: | Ramona L. Trader |
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Affiliation: | University of Maryland , College Park, Maryland, 20742 |
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Abstract: | The squared error loss function applied to Bayesian predictive distributions is investigated as a variable selection criterion in linear regression equations. It is illustrated that “cost-free” variables may be eliminated if they are poor predictors. Regression models where the predictors are fixed and where they are stochastic are both considered. An empirical examination of the criterion and a comparison with other techniques are presented. |
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Keywords: | Variable selection bayesian methods predictiue distribution multiple regression |
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